{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Document Layout Analysis Using SSD"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## About the network:\n",
    "1. Paper on SSD: https://arxiv.org/abs/1512.02325\n",
    "\n",
    "2. Blog-1 on SSD: https://towardsdatascience.com/review-ssd-single-shot-detector-object-detection-851a94607d11\n",
    "\n",
    "3. Blog-2 on SSD: https://medium.com/@jonathan_hui/ssd-object-detection-single-shot-multibox-detector-for-real-time-processing-9bd8deac0e06"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Table of Contents\n",
    "\n",
    "### 1. Installation Instructions\n",
    "### 2. Use trained Model for Document Layout Analysis\n",
    "### 3. How to train using PRImA Layout Analysis Dataset"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Installation\n",
    "\n",
    "- Run these commands\n",
    "\n",
    "    - git clone https://github.com/Tessellate-Imaging/Monk_Object_Detection.git\n",
    "\n",
    "    - cd Monk_Object_Detection/1_gluoncv_finetune/installation\n",
    "\n",
    "- Select the right requirements file and run\n",
    "\n",
    "    - cat requirements_cuda10.1.txt | xargs -n 1 -L 1 pip install"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": [
    "! git clone https://github.com/Tessellate-Imaging/Monk_Object_Detection.git"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": [
    "# For colab use the command below\n",
    "#! cd Monk_Object_Detection/1_gluoncv_finetune/installation && cat requirements_colab.txt | xargs -n 1 -L 1 pip install\n",
    "\n",
    "\n",
    "# For Local systems and cloud select the right CUDA version\n",
    "!cd Monk_Object_Detection/1_gluoncv_finetune/installation && cat requirements_cuda10.1.txt | xargs -n 1 -L 1 pip install"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Use Already Trained Model for Demo"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [],
   "source": [
    "import os\n",
    "import sys\n",
    "sys.path.append(\"Monk_Object_Detection/1_gluoncv_finetune/lib/\");"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {},
   "outputs": [],
   "source": [
    "from inference_prototype import Infer"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": [
    "#Download trained model"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": [
    "! wget --load-cookies /tmp/cookies.txt \"https://docs.google.com/uc?export=download&confirm=$(wget --save-cookies /tmp/cookies.txt --keep-session-cookies --no-check-certificate 'https://docs.google.com/uc?export=download&id=1E6T7RKGwy-v1MUxVJm-rxt5XcRyr2SQ7' -O- | sed -rn 's/.*confirm=([0-9A-Za-z_]+).*/\\1\\n/p')&id=1E6T7RKGwy-v1MUxVJm-rxt5XcRyr2SQ7\" -O obj_dla_ssd512_trained.zip && rm -rf /tmp/cookies.txt"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {},
   "outputs": [],
   "source": [
    "! unzip -qq obj_dla_ssd512_trained.zip"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "metadata": {},
   "outputs": [],
   "source": [
    "model_name = \"ssd_512_vgg16_atrous_coco\";\n",
    "params_file = \"dla_ssd512/dla_ssd512-vgg16.params\";\n",
    "class_list = [\"paragraph\", \"heading\", \"credit\", \"footer\", \"drop-capital\", \"floating\", \"noise\", \"maths\", \"header\", \"caption\", \"image\", \"linedrawing\", \"graphics\", \"fname\", \"page-number\", \"chart\", \"separator\", \"table\"];"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 9,
   "metadata": {},
   "outputs": [],
   "source": [
    "gtf = Infer(model_name, params_file, class_list, use_gpu=True);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 11,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    },
    {
     "data": {
      "text/plain": [
       "<Figure size 432x288 with 0 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "img_name = \"Test_Images/test1.jpg\"; \n",
    "visualize = True;\n",
    "thresh = 0.3;\n",
    "output = gtf.run(img_name, visualize=visualize, thresh=thresh);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 13,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    },
    {
     "data": {
      "text/plain": [
       "<Figure size 432x288 with 0 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "img_name = \"Test_Images/test2.jpg\"; \n",
    "visualize = True;\n",
    "thresh = 0.3;\n",
    "output = gtf.run(img_name, visualize=visualize, thresh=thresh);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 14,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    },
    {
     "data": {
      "text/plain": [
       "<Figure size 432x288 with 0 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "img_name = \"Test_Images/test3.jpg\"; \n",
    "visualize = True;\n",
    "thresh = 0.4;\n",
    "output = gtf.run(img_name, visualize=visualize, thresh=thresh);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "collapsed": true,
    "scrolled": true
   },
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Train Your Own Model"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Dataset Credits\n",
    "- https://www.primaresearch.org/datasets/Layout_Analysis"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": [
    "#Download Dataset"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": [
    "! wget --load-cookies /tmp/cookies.txt \"https://docs.google.com/uc?export=download&confirm=$(wget --quiet --save-cookies /tmp/cookies.txt --keep-session-cookies --no-check-certificate 'https://docs.google.com/uc?export=download&id=1iBfafT1WHAtKAW0a1ifLzvW5f0ytm2i_' -O- | sed -rn 's/.*confirm=([0-9A-Za-z_]+).*/\\1\\n/p')&id=1iBfafT1WHAtKAW0a1ifLzvW5f0ytm2i_\" -O PRImA_Layout_Analysis_Dataset.zip && rm -rf /tmp/cookies.txt"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [],
   "source": [
    "! unzip -qq PRImA_Layout_Analysis_Dataset.zip"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Data Preprocessing"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Library for Data Augmentation\n",
    "Refer to https://github.com/albumentations-team/albumentations for more details"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": [
    "! pip install albumentations"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {},
   "outputs": [],
   "source": [
    "import os\n",
    "import sys\n",
    "import cv2\n",
    "import numpy as np\n",
    "import pandas as pd\n",
    "from PIL import Image\n",
    "import albumentations as A\n",
    "import glob\n",
    "import matplotlib.pyplot as plt\n",
    "import xmltodict\n",
    "import json\n",
    "from tqdm.notebook import tqdm\n",
    "from pycocotools.coco import COCO"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 15,
   "metadata": {},
   "outputs": [],
   "source": [
    "root_dir = \"PRImA Layout Analysis Dataset/\";\n",
    "img_dir = \"Images/\";\n",
    "anno_dir = \"XML/\";\n",
    "final_root_dir=\"Document_Layout_Analysis/\" #Directory for jpeg and augmented images"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 10,
   "metadata": {},
   "outputs": [],
   "source": [
    "if not os.path.exists(final_root_dir):\n",
    "    os.makedirs(final_root_dir)\n",
    "\n",
    "if not os.path.exists(final_root_dir+img_dir):\n",
    "    os.makedirs(final_root_dir+img_dir)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## TIFF Image Format to JPEG Image Format"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 16,
   "metadata": {},
   "outputs": [],
   "source": [
    "for name in glob.glob(root_dir+img_dir+'*.tif'):\n",
    "    im = Image.open(name)\n",
    "    name = str(name).rstrip(\".tif\")\n",
    "    name = str(name).lstrip(root_dir)\n",
    "    name = str(name).lstrip(img_dir)\n",
    "    im.save(final_root_dir+ img_dir+ name + '.jpg', 'JPEG')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Format Conversion and Data Augmentation"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "As most part of a document is text, there were far more paragraphs in the dataset than there were other labels such as tables or graphs. To handle this huge bias in the dataset, we augmented only those document images which had one of these minority labels in them. For example, if the document only had paragraphs and images, then we didn’t augment it. But if it had tables, charts, graphs or any other minority label, we augmented that image by many folds. This process helped in reducing the bias in the dataset by around 25%. This selection and augmentation has been done during the format conversion from VOC to Monk Format."
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Given format- VOC Format\n",
    "\n",
    "### Dataset Directory Structure\n",
    "\n",
    "    ./PRImA Layout Analysis Dataset/ (root_dir)\n",
    "          |\n",
    "          |-----------Images (img_dir)\n",
    "          |              |\n",
    "          |              |------------------img1.jpg\n",
    "          |              |------------------img2.jpg\n",
    "          |              |------------------.........(and so on)\n",
    "          |\n",
    "          |\n",
    "          |-----------Annotations (anno_dir)\n",
    "          |              |\n",
    "          |              |------------------img1.xml\n",
    "          |              |------------------img2.xml\n",
    "          |              |------------------.........(and so on)\n",
    "          \n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Required Format- Monk Format\n",
    "\n",
    "### Dataset Directory Structure\n",
    "\n",
    "    ./Document_Layout_Analysis/ (final_root_dir)\n",
    "          |\n",
    "          |-----------Images (img_dir)\n",
    "          |              |\n",
    "          |              |------------------img1.jpg\n",
    "          |              |------------------img2.jpg\n",
    "          |              |------------------.........(and so on)\n",
    "          |\n",
    "          |\n",
    "          |-----------train_labels.csv (anno_file)\n",
    "          \n",
    "          \n",
    "### Annotation file format\n",
    "\n",
    "           | Id         | Labels                                 |\n",
    "           | img1.jpg   | x1 y1 x2 y2 label1 x1 y1 x2 y2 label2  |\n",
    "           \n",
    "- Labels:  xmin ymin xmax ymax label\n",
    "- xmin, ymin - top left corner of bounding box\n",
    "- xmax, ymax - bottom right corner of bounding box"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": 18,
   "metadata": {},
   "outputs": [],
   "source": [
    "files = os.listdir(root_dir + anno_dir);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 19,
   "metadata": {},
   "outputs": [],
   "source": [
    "combined = [];"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Data Augmentation Function"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 20,
   "metadata": {},
   "outputs": [],
   "source": [
    "def augmentData(fname, boxes):\n",
    "    image = cv2.imread(final_root_dir+img_dir+fname)\n",
    "    image = cv2.cvtColor(image, cv2.COLOR_BGR2RGB)\n",
    " \n",
    "    transform = A.Compose([\n",
    "        A.IAAPerspective(p=0.7),   \n",
    "        A.ShiftScaleRotate(shift_limit=0.1, scale_limit=0.1, rotate_limit=5, p=0.5),\n",
    "        A.IAAAdditiveGaussianNoise(),\n",
    "        A.ChannelShuffle(),\n",
    "        A.RandomBrightnessContrast(),\n",
    "        A.RGBShift(p=0.8),\n",
    "        A.HueSaturationValue(p=0.8)\n",
    "        ], bbox_params=A.BboxParams(format='pascal_voc', min_visibility=0.2))\n",
    "    \n",
    "    for i in range(1, 9):\n",
    "        label=\"\"\n",
    "        transformed = transform(image=image, bboxes=boxes)\n",
    "        transformed_image = transformed['image']\n",
    "        transformed_bboxes = transformed['bboxes']\n",
    "        #print(transformed_bboxes)\n",
    "        flag=False\n",
    "        for box in transformed_bboxes:\n",
    "            x_min, y_min, x_max, y_max, class_name = box\n",
    "            if(xmax<=xmin or ymax<=ymin):\n",
    "                flag=True\n",
    "                break\n",
    "            label+= str(int(x_min))+' '+str(int(y_min))+' '+str(int(x_max))+' '+str(int(y_max))+' '+class_name+' '\n",
    "                        \n",
    "        if(flag):\n",
    "            continue\n",
    "        cv2.imwrite(final_root_dir+img_dir+str(i)+fname, transformed_image)\n",
    "        label=label[:-1]\n",
    "        combined.append([str(i) + fname, label])\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# VOC to Monk Format Conversion\n",
    "Applying Data Augmentation only on those images which contain atleast 1 minority class so as to reduce bias in the dataset"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 21,
   "metadata": {
    "scrolled": true
   },
   "outputs": [
    {
     "data": {
      "application/vnd.jupyter.widget-view+json": {
       "model_id": "87d78b7a000e4490bad1c64fcfd5a9c8",
       "version_major": 2,
       "version_minor": 0
      },
      "text/plain": [
       "HBox(children=(FloatProgress(value=0.0, max=478.0), HTML(value='')))"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "\n"
     ]
    }
   ],
   "source": [
    "#label generation for csv\n",
    "for i in tqdm(range(len(files))):\n",
    "    box=[];\n",
    "    augment=False;\n",
    "    annoFile = root_dir + anno_dir + files[i];\n",
    "    f = open(annoFile, 'r');\n",
    "    my_xml = f.read();\n",
    "    anno= dict(dict(dict(xmltodict.parse(my_xml))['PcGts'])['Page'])\n",
    "    fname=\"\"\n",
    "    for j in range(len(files[i])):\n",
    "        if((files[i][j])>='0' and files[i][j]<='9'):\n",
    "            fname+=files[i][j];\n",
    "    fname+=\".jpg\"\n",
    "    image = cv2.imread(final_root_dir+img_dir+fname)\n",
    "    height, width = image.shape[:2]    \n",
    "    label_str = \"\"\n",
    "    for key in anno.keys():\n",
    "        if(key=='@imageFilename' or key=='@imageWidth' or key=='@imageHeight'):\n",
    "            continue\n",
    "        if(key==\"TextRegion\"):\n",
    "            if(type(anno[\"TextRegion\"]) == list):\n",
    "                for j in range(len(anno[\"TextRegion\"])):\n",
    "                    text=anno[\"TextRegion\"][j]\n",
    "                    xmin=width\n",
    "                    ymin=height\n",
    "                    xmax=0\n",
    "                    ymax=0\n",
    "                    if(text[\"Coords\"]):\n",
    "                        if(text[\"Coords\"][\"Point\"]):\n",
    "                            for k in range(len(text[\"Coords\"][\"Point\"])):\n",
    "                                coordinates=anno[\"TextRegion\"][j][\"Coords\"][\"Point\"][k]\n",
    "                                xmin= min(xmin, int(coordinates['@x']));\n",
    "                                ymin= min(ymin, int(coordinates['@y']));\n",
    "                                xmax= min(max(xmax, int(coordinates['@x'])), width);\n",
    "                                ymax= min(max(ymax, int(coordinates['@y'])), height);\n",
    "                            if('@type' in text.keys()):    \n",
    "                                label_str+= str(xmin)+' '+str(ymin)+' '+str(xmax)+' '+str(ymax)+' '+text['@type']+' '\n",
    "                                if(xmax<=xmin or ymax<=ymin):\n",
    "                                    continue\n",
    "                                tbox=[];\n",
    "                                tbox.append(xmin)\n",
    "                                tbox.append(ymin)\n",
    "                                tbox.append(xmax)\n",
    "                                tbox.append(ymax)\n",
    "                                tbox.append(text['@type'])\n",
    "                                box.append(tbox)\n",
    "            else:\n",
    "                text=anno[\"TextRegion\"]\n",
    "                xmin=width\n",
    "                ymin=height\n",
    "                xmax=0\n",
    "                ymax=0\n",
    "                if(text[\"Coords\"]):\n",
    "                    if(text[\"Coords\"][\"Point\"]):\n",
    "                        for k in range(len(text[\"Coords\"][\"Point\"])):\n",
    "                            coordinates=anno[\"TextRegion\"][\"Coords\"][\"Point\"][k]\n",
    "                            xmin= min(xmin, int(coordinates['@x']));\n",
    "                            ymin= min(ymin, int(coordinates['@y']));\n",
    "                            xmax= min(max(xmax, int(coordinates['@x'])), width);\n",
    "                            ymax= min(max(ymax, int(coordinates['@y'])), height);\n",
    "                        if('@type' in text.keys()):    \n",
    "                            label_str+= str(xmin)+' '+str(ymin)+' '+str(xmax)+' '+str(ymax)+' '+text['@type']+' '\n",
    "                            if(xmax<=xmin or ymax<=ymin):\n",
    "                                continue\n",
    "                            tbox=[];\n",
    "                            tbox.append(xmin)\n",
    "                            tbox.append(ymin)\n",
    "                            tbox.append(xmax)\n",
    "                            tbox.append(ymax)\n",
    "                            tbox.append(text['@type'])\n",
    "                            box.append(tbox)\n",
    "        \n",
    "        else:\n",
    "            val=\"\"\n",
    "            if(key=='GraphicRegion'):\n",
    "                val=\"graphics\"\n",
    "                augment=True\n",
    "            elif(key=='ImageRegion'):\n",
    "                val=\"image\"\n",
    "            elif(key=='NoiseRegion'):\n",
    "                val=\"noise\"\n",
    "                augment=True\n",
    "            elif(key=='ChartRegion'):\n",
    "                val=\"chart\"\n",
    "                augment=True\n",
    "            elif(key=='TableRegion'):\n",
    "                val=\"table\"\n",
    "                augment=True\n",
    "            elif(key=='SeparatorRegion'):\n",
    "                val=\"separator\"\n",
    "            elif(key=='MathsRegion'):\n",
    "                val=\"maths\"\n",
    "                augment=True\n",
    "            elif(key=='LineDrawingRegion'):\n",
    "                val=\"linedrawing\"\n",
    "                augment=True\n",
    "            else:\n",
    "                val=\"frame\"\n",
    "                augment=True\n",
    "\n",
    "            \n",
    "            if(type(anno[key]) == list):\n",
    "                for j in range(len(anno[key])):\n",
    "                    text=anno[key][j]\n",
    "                    xmin=width\n",
    "                    ymin=height\n",
    "                    xmax=0\n",
    "                    ymax=0\n",
    "                    if(text[\"Coords\"]):\n",
    "                        if(text[\"Coords\"][\"Point\"]):\n",
    "                            for k in range(len(text[\"Coords\"][\"Point\"])):\n",
    "                                coordinates=anno[key][j][\"Coords\"][\"Point\"][k]\n",
    "                                xmin= min(xmin, int(coordinates['@x']));\n",
    "                                ymin= min(ymin, int(coordinates['@y']));\n",
    "                                xmax= min(max(xmax, int(coordinates['@x'])), width);\n",
    "                                ymax= min(max(ymax, int(coordinates['@y'])), height);\n",
    "                        label_str+= str(xmin)+' '+str(ymin)+' '+str(xmax)+' '+str(ymax)+' '+ val +' '\n",
    "                        if(xmax<=xmin or ymax<=ymin):\n",
    "                            continue\n",
    "                        tbox=[];\n",
    "                        tbox.append(xmin)\n",
    "                        tbox.append(ymin)\n",
    "                        tbox.append(xmax)\n",
    "                        tbox.append(ymax)\n",
    "                        tbox.append(val)\n",
    "                        box.append(tbox)\n",
    "            else:\n",
    "                text=anno[key]\n",
    "                xmin=width\n",
    "                ymin=height\n",
    "                xmax=0\n",
    "                ymax=0\n",
    "                if(text[\"Coords\"]):\n",
    "                    if(text[\"Coords\"][\"Point\"]):\n",
    "                        for k in range(len(text[\"Coords\"][\"Point\"])):\n",
    "                            coordinates=anno[key][\"Coords\"][\"Point\"][k]\n",
    "                            xmin= min(xmin, int(coordinates['@x']));\n",
    "                            ymin= min(ymin, int(coordinates['@y']));\n",
    "                            xmax= min(max(xmax, int(coordinates['@x'])), width);\n",
    "                            ymax= min(max(ymax, int(coordinates['@y'])), height);  \n",
    "                        label_str+= str(xmin)+' '+str(ymin)+' '+str(xmax)+' '+str(ymax)+' '+val+' '\n",
    "                        if(xmax<=xmin or ymax<=ymin):\n",
    "                            continue\n",
    "                        tbox=[];\n",
    "                        tbox.append(xmin)\n",
    "                        tbox.append(ymin)\n",
    "                        tbox.append(xmax)\n",
    "                        tbox.append(ymax)\n",
    "                        tbox.append(val)\n",
    "                        box.append(tbox)\n",
    "\n",
    "    label_str=label_str[:-1]\n",
    "    combined.append([fname, label_str])\n",
    "\n",
    "    if(augment):\n",
    "        augmentData(fname, box)\n",
    "        "
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 22,
   "metadata": {},
   "outputs": [],
   "source": [
    "df = pd.DataFrame(combined, columns = ['ID', 'Label']);\n",
    "df.to_csv(final_root_dir + \"/train_labels.csv\", index=False);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Training"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {},
   "outputs": [],
   "source": [
    "import os\n",
    "import sys\n",
    "\n",
    "sys.path.append(\"Monk_Object_Detection/1_gluoncv_finetune/lib/\");"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [],
   "source": [
    "from detector_prototype import Detector"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {},
   "outputs": [],
   "source": [
    "gtf = Detector();"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "metadata": {},
   "outputs": [],
   "source": [
    "root = \"Document_Layout_Analysis/\";\n",
    "img_dir = \"Images/\";\n",
    "anno_file = \"train_labels.csv\";\n",
    "batch_size=8;"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "application/vnd.jupyter.widget-view+json": {
       "model_id": "8fa8481918a947f2916edee5019ffd4a",
       "version_major": 2,
       "version_minor": 0
      },
      "text/plain": [
       "HBox(children=(FloatProgress(value=0.0, max=3059.0), HTML(value='')))"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "\n"
     ]
    },
    {
     "data": {
      "application/vnd.jupyter.widget-view+json": {
       "model_id": "8b0577176e8147e5812cfd2b0b983a5a",
       "version_major": 2,
       "version_minor": 0
      },
      "text/plain": [
       "HBox(children=(FloatProgress(value=0.0, max=3059.0), HTML(value='')))"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "\n"
     ]
    }
   ],
   "source": [
    "gtf.Dataset(root, img_dir, anno_file, batch_size=batch_size);"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Available models\n",
    "    ssd_300_vgg16_atrous_coco\n",
    "    ssd_300_vgg16_atrous_voc\n",
    "    ssd_512_vgg16_atrous_coco\n",
    "    ssd_512_vgg16_atrous_voc\n",
    "    ssd_512_resnet50_v1_coco\n",
    "    ssd_512_resnet50_v1_voc\n",
    "    ssd_512_mobilenet1.0_voc\n",
    "    ssd_512_mobilenet1.0_coco\n",
    "    yolo3_darknet53_voc\n",
    "    yolo3_darknet53_coco\n",
    "    yolo3_mobilenet1.0_voc\n",
    "    yolo3_mobilenet1.0_coco"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "metadata": {},
   "outputs": [],
   "source": [
    "#vgg16 architecture, with atrous convolutions, pretrained on COCO dataset is used for this task\n",
    "pretrained = True;         \n",
    "gpu=True;\n",
    "model_name = \"ssd_512_vgg16_atrous_coco\";"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "metadata": {},
   "outputs": [],
   "source": [
    "gtf.Model(model_name, use_pretrained=pretrained, use_gpu=gpu);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 10,
   "metadata": {},
   "outputs": [],
   "source": [
    "gtf.Set_Learning_Rate(0.003);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 11,
   "metadata": {},
   "outputs": [],
   "source": [
    "epochs=30;\n",
    "params_file = \"saved_model.params\";"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 12,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "[Epoch 0][Batch 0], Speed: 0.340 samples/sec, CrossEntropy=20.430, SmoothL1=7.349\n",
      "[Epoch 0][Batch 20], Speed: 1.176 samples/sec, CrossEntropy=12.521, SmoothL1=5.808\n",
      "[Epoch 0][Batch 40], Speed: 2.159 samples/sec, CrossEntropy=11.224, SmoothL1=5.160\n",
      "[Epoch 0][Batch 60], Speed: 1.375 samples/sec, CrossEntropy=10.177, SmoothL1=4.937\n",
      "[Epoch 0][Batch 80], Speed: 1.622 samples/sec, CrossEntropy=9.225, SmoothL1=4.885\n",
      "[Epoch 0][Batch 100], Speed: 1.218 samples/sec, CrossEntropy=8.411, SmoothL1=4.783\n",
      "[Epoch 0][Batch 120], Speed: 1.050 samples/sec, CrossEntropy=7.783, SmoothL1=4.628\n",
      "[Epoch 0][Batch 140], Speed: 0.665 samples/sec, CrossEntropy=7.278, SmoothL1=4.395\n",
      "[Epoch 0][Batch 160], Speed: 1.531 samples/sec, CrossEntropy=6.879, SmoothL1=4.303\n",
      "[Epoch 0][Batch 180], Speed: 0.746 samples/sec, CrossEntropy=6.547, SmoothL1=4.201\n",
      "[Epoch 0][Batch 200], Speed: 1.070 samples/sec, CrossEntropy=6.282, SmoothL1=4.167\n",
      "[Epoch 0][Batch 220], Speed: 1.162 samples/sec, CrossEntropy=6.051, SmoothL1=4.091\n",
      "[Epoch 0][Batch 240], Speed: 1.137 samples/sec, CrossEntropy=5.851, SmoothL1=4.014\n",
      "[Epoch 0][Batch 260], Speed: 0.980 samples/sec, CrossEntropy=5.680, SmoothL1=3.908\n",
      "[Epoch 0][Batch 280], Speed: 0.750 samples/sec, CrossEntropy=5.525, SmoothL1=3.827\n",
      "[Epoch 0][Batch 300], Speed: 1.250 samples/sec, CrossEntropy=5.392, SmoothL1=3.786\n",
      "[Epoch 0][Batch 320], Speed: 1.149 samples/sec, CrossEntropy=5.268, SmoothL1=3.746\n",
      "[Epoch 0][Batch 340], Speed: 0.701 samples/sec, CrossEntropy=5.162, SmoothL1=3.700\n",
      "[Epoch 0][Batch 360], Speed: 0.669 samples/sec, CrossEntropy=5.068, SmoothL1=3.643\n",
      "[Epoch 0][Batch 380], Speed: 0.711 samples/sec, CrossEntropy=4.979, SmoothL1=3.589\n",
      "[Epoch 1][Batch 0], Speed: 1.962 samples/sec, CrossEntropy=3.322, SmoothL1=5.159\n",
      "[Epoch 1][Batch 20], Speed: 1.082 samples/sec, CrossEntropy=3.289, SmoothL1=2.736\n",
      "[Epoch 1][Batch 40], Speed: 1.245 samples/sec, CrossEntropy=3.257, SmoothL1=2.933\n",
      "[Epoch 1][Batch 60], Speed: 1.301 samples/sec, CrossEntropy=3.271, SmoothL1=3.060\n",
      "[Epoch 1][Batch 80], Speed: 0.826 samples/sec, CrossEntropy=3.242, SmoothL1=3.032\n",
      "[Epoch 1][Batch 100], Speed: 0.936 samples/sec, CrossEntropy=3.234, SmoothL1=3.055\n",
      "[Epoch 1][Batch 120], Speed: 0.642 samples/sec, CrossEntropy=3.245, SmoothL1=3.033\n",
      "[Epoch 1][Batch 140], Speed: 0.913 samples/sec, CrossEntropy=3.240, SmoothL1=3.010\n",
      "[Epoch 1][Batch 160], Speed: 0.691 samples/sec, CrossEntropy=3.231, SmoothL1=2.935\n",
      "[Epoch 1][Batch 180], Speed: 1.270 samples/sec, CrossEntropy=3.214, SmoothL1=2.919\n",
      "[Epoch 1][Batch 200], Speed: 0.943 samples/sec, CrossEntropy=3.200, SmoothL1=2.933\n",
      "[Epoch 1][Batch 220], Speed: 1.010 samples/sec, CrossEntropy=3.196, SmoothL1=2.930\n",
      "[Epoch 1][Batch 240], Speed: 1.128 samples/sec, CrossEntropy=3.186, SmoothL1=2.896\n",
      "[Epoch 1][Batch 260], Speed: 1.037 samples/sec, CrossEntropy=3.184, SmoothL1=2.882\n",
      "[Epoch 1][Batch 280], Speed: 1.251 samples/sec, CrossEntropy=3.178, SmoothL1=2.882\n",
      "[Epoch 1][Batch 300], Speed: 0.767 samples/sec, CrossEntropy=3.169, SmoothL1=2.901\n",
      "[Epoch 1][Batch 320], Speed: 0.953 samples/sec, CrossEntropy=3.163, SmoothL1=2.881\n",
      "[Epoch 1][Batch 340], Speed: 0.618 samples/sec, CrossEntropy=3.165, SmoothL1=2.915\n",
      "[Epoch 1][Batch 360], Speed: 1.411 samples/sec, CrossEntropy=3.156, SmoothL1=2.912\n",
      "[Epoch 1][Batch 380], Speed: 0.491 samples/sec, CrossEntropy=3.148, SmoothL1=2.918\n",
      "[Epoch 2][Batch 0], Speed: 1.241 samples/sec, CrossEntropy=2.896, SmoothL1=1.123\n",
      "[Epoch 2][Batch 20], Speed: 0.882 samples/sec, CrossEntropy=3.025, SmoothL1=2.582\n",
      "[Epoch 2][Batch 40], Speed: 1.022 samples/sec, CrossEntropy=3.050, SmoothL1=2.745\n",
      "[Epoch 2][Batch 60], Speed: 2.037 samples/sec, CrossEntropy=3.028, SmoothL1=2.815\n",
      "[Epoch 2][Batch 80], Speed: 1.134 samples/sec, CrossEntropy=3.028, SmoothL1=2.740\n",
      "[Epoch 2][Batch 100], Speed: 0.899 samples/sec, CrossEntropy=3.017, SmoothL1=2.740\n",
      "[Epoch 2][Batch 120], Speed: 2.283 samples/sec, CrossEntropy=3.020, SmoothL1=2.722\n",
      "[Epoch 2][Batch 140], Speed: 1.209 samples/sec, CrossEntropy=2.998, SmoothL1=2.705\n",
      "[Epoch 2][Batch 160], Speed: 1.420 samples/sec, CrossEntropy=2.998, SmoothL1=2.731\n",
      "[Epoch 2][Batch 180], Speed: 1.243 samples/sec, CrossEntropy=2.988, SmoothL1=2.779\n",
      "[Epoch 2][Batch 200], Speed: 0.814 samples/sec, CrossEntropy=2.983, SmoothL1=2.804\n",
      "[Epoch 2][Batch 220], Speed: 0.681 samples/sec, CrossEntropy=2.974, SmoothL1=2.809\n",
      "[Epoch 2][Batch 240], Speed: 1.213 samples/sec, CrossEntropy=2.966, SmoothL1=2.803\n",
      "[Epoch 2][Batch 260], Speed: 1.040 samples/sec, CrossEntropy=2.951, SmoothL1=2.786\n",
      "[Epoch 2][Batch 280], Speed: 1.047 samples/sec, CrossEntropy=2.939, SmoothL1=2.765\n",
      "[Epoch 2][Batch 300], Speed: 1.084 samples/sec, CrossEntropy=2.934, SmoothL1=2.760\n",
      "[Epoch 2][Batch 320], Speed: 0.855 samples/sec, CrossEntropy=2.924, SmoothL1=2.756\n",
      "[Epoch 2][Batch 340], Speed: 1.015 samples/sec, CrossEntropy=2.917, SmoothL1=2.746\n",
      "[Epoch 2][Batch 360], Speed: 1.378 samples/sec, CrossEntropy=2.909, SmoothL1=2.739\n",
      "[Epoch 2][Batch 380], Speed: 1.634 samples/sec, CrossEntropy=2.905, SmoothL1=2.730\n",
      "[Epoch 3][Batch 0], Speed: 0.862 samples/sec, CrossEntropy=3.150, SmoothL1=2.100\n",
      "[Epoch 3][Batch 20], Speed: 0.782 samples/sec, CrossEntropy=2.872, SmoothL1=2.636\n",
      "[Epoch 3][Batch 40], Speed: 1.407 samples/sec, CrossEntropy=2.848, SmoothL1=2.796\n",
      "[Epoch 3][Batch 60], Speed: 1.166 samples/sec, CrossEntropy=2.798, SmoothL1=2.754\n",
      "[Epoch 3][Batch 80], Speed: 1.050 samples/sec, CrossEntropy=2.771, SmoothL1=2.835\n",
      "[Epoch 3][Batch 100], Speed: 1.592 samples/sec, CrossEntropy=2.756, SmoothL1=2.742\n",
      "[Epoch 3][Batch 120], Speed: 0.761 samples/sec, CrossEntropy=2.756, SmoothL1=2.677\n",
      "[Epoch 3][Batch 140], Speed: 0.990 samples/sec, CrossEntropy=2.767, SmoothL1=2.650\n",
      "[Epoch 3][Batch 160], Speed: 1.072 samples/sec, CrossEntropy=2.765, SmoothL1=2.665\n",
      "[Epoch 3][Batch 180], Speed: 0.843 samples/sec, CrossEntropy=2.761, SmoothL1=2.660\n",
      "[Epoch 3][Batch 200], Speed: 1.258 samples/sec, CrossEntropy=2.759, SmoothL1=2.627\n",
      "[Epoch 3][Batch 220], Speed: 1.044 samples/sec, CrossEntropy=2.757, SmoothL1=2.586\n",
      "[Epoch 3][Batch 240], Speed: 1.211 samples/sec, CrossEntropy=2.752, SmoothL1=2.556\n",
      "[Epoch 3][Batch 260], Speed: 0.803 samples/sec, CrossEntropy=2.750, SmoothL1=2.559\n",
      "[Epoch 3][Batch 280], Speed: 0.740 samples/sec, CrossEntropy=2.750, SmoothL1=2.589\n",
      "[Epoch 3][Batch 300], Speed: 1.283 samples/sec, CrossEntropy=2.753, SmoothL1=2.581\n",
      "[Epoch 3][Batch 320], Speed: 1.064 samples/sec, CrossEntropy=2.749, SmoothL1=2.583\n",
      "[Epoch 3][Batch 340], Speed: 1.727 samples/sec, CrossEntropy=2.754, SmoothL1=2.604\n",
      "[Epoch 3][Batch 360], Speed: 1.343 samples/sec, CrossEntropy=2.744, SmoothL1=2.582\n",
      "[Epoch 3][Batch 380], Speed: 0.905 samples/sec, CrossEntropy=2.747, SmoothL1=2.590\n",
      "[Epoch 4][Batch 0], Speed: 0.889 samples/sec, CrossEntropy=2.290, SmoothL1=1.704\n",
      "[Epoch 4][Batch 20], Speed: 0.805 samples/sec, CrossEntropy=2.759, SmoothL1=2.704\n",
      "[Epoch 4][Batch 40], Speed: 0.821 samples/sec, CrossEntropy=2.762, SmoothL1=2.547\n",
      "[Epoch 4][Batch 60], Speed: 1.265 samples/sec, CrossEntropy=2.757, SmoothL1=2.633\n",
      "[Epoch 4][Batch 80], Speed: 0.740 samples/sec, CrossEntropy=2.730, SmoothL1=2.637\n",
      "[Epoch 4][Batch 100], Speed: 0.642 samples/sec, CrossEntropy=2.710, SmoothL1=2.593\n",
      "[Epoch 4][Batch 120], Speed: 0.734 samples/sec, CrossEntropy=2.677, SmoothL1=2.563\n",
      "[Epoch 4][Batch 140], Speed: 0.639 samples/sec, CrossEntropy=2.660, SmoothL1=2.513\n",
      "[Epoch 4][Batch 160], Speed: 1.161 samples/sec, CrossEntropy=2.676, SmoothL1=2.477\n",
      "[Epoch 4][Batch 180], Speed: 1.494 samples/sec, CrossEntropy=2.689, SmoothL1=2.492\n",
      "[Epoch 4][Batch 200], Speed: 1.372 samples/sec, CrossEntropy=2.685, SmoothL1=2.470\n",
      "[Epoch 4][Batch 220], Speed: 1.365 samples/sec, CrossEntropy=2.671, SmoothL1=2.460\n",
      "[Epoch 4][Batch 240], Speed: 1.206 samples/sec, CrossEntropy=2.667, SmoothL1=2.447\n",
      "[Epoch 4][Batch 260], Speed: 1.200 samples/sec, CrossEntropy=2.672, SmoothL1=2.430\n",
      "[Epoch 4][Batch 280], Speed: 1.499 samples/sec, CrossEntropy=2.662, SmoothL1=2.402\n",
      "[Epoch 4][Batch 300], Speed: 0.890 samples/sec, CrossEntropy=2.669, SmoothL1=2.416\n",
      "[Epoch 4][Batch 320], Speed: 1.079 samples/sec, CrossEntropy=2.670, SmoothL1=2.463\n",
      "[Epoch 4][Batch 340], Speed: 1.129 samples/sec, CrossEntropy=2.677, SmoothL1=2.477\n",
      "[Epoch 4][Batch 360], Speed: 0.943 samples/sec, CrossEntropy=2.676, SmoothL1=2.471\n",
      "[Epoch 4][Batch 380], Speed: 0.815 samples/sec, CrossEntropy=2.678, SmoothL1=2.455\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "[Epoch 5][Batch 0], Speed: 1.202 samples/sec, CrossEntropy=2.481, SmoothL1=2.156\n",
      "[Epoch 5][Batch 20], Speed: 0.927 samples/sec, CrossEntropy=2.647, SmoothL1=1.914\n",
      "[Epoch 5][Batch 40], Speed: 0.906 samples/sec, CrossEntropy=2.616, SmoothL1=2.252\n",
      "[Epoch 5][Batch 60], Speed: 1.720 samples/sec, CrossEntropy=2.614, SmoothL1=2.362\n",
      "[Epoch 5][Batch 80], Speed: 1.335 samples/sec, CrossEntropy=2.600, SmoothL1=2.327\n",
      "[Epoch 5][Batch 100], Speed: 1.180 samples/sec, CrossEntropy=2.616, SmoothL1=2.370\n",
      "[Epoch 5][Batch 120], Speed: 1.605 samples/sec, CrossEntropy=2.625, SmoothL1=2.434\n",
      "[Epoch 5][Batch 140], Speed: 1.163 samples/sec, CrossEntropy=2.622, SmoothL1=2.454\n",
      "[Epoch 5][Batch 160], Speed: 1.367 samples/sec, CrossEntropy=2.601, SmoothL1=2.399\n",
      "[Epoch 5][Batch 180], Speed: 1.381 samples/sec, CrossEntropy=2.597, SmoothL1=2.397\n",
      "[Epoch 5][Batch 200], Speed: 1.444 samples/sec, CrossEntropy=2.610, SmoothL1=2.405\n",
      "[Epoch 5][Batch 220], Speed: 1.093 samples/sec, CrossEntropy=2.611, SmoothL1=2.415\n",
      "[Epoch 5][Batch 240], Speed: 0.955 samples/sec, CrossEntropy=2.617, SmoothL1=2.451\n",
      "[Epoch 5][Batch 260], Speed: 2.057 samples/sec, CrossEntropy=2.615, SmoothL1=2.445\n",
      "[Epoch 5][Batch 280], Speed: 1.274 samples/sec, CrossEntropy=2.611, SmoothL1=2.441\n",
      "[Epoch 5][Batch 300], Speed: 1.432 samples/sec, CrossEntropy=2.602, SmoothL1=2.427\n",
      "[Epoch 5][Batch 320], Speed: 1.810 samples/sec, CrossEntropy=2.607, SmoothL1=2.436\n",
      "[Epoch 5][Batch 340], Speed: 1.040 samples/sec, CrossEntropy=2.615, SmoothL1=2.456\n",
      "[Epoch 5][Batch 360], Speed: 1.343 samples/sec, CrossEntropy=2.617, SmoothL1=2.465\n",
      "[Epoch 5][Batch 380], Speed: 1.041 samples/sec, CrossEntropy=2.613, SmoothL1=2.462\n",
      "[Epoch 6][Batch 0], Speed: 0.709 samples/sec, CrossEntropy=2.953, SmoothL1=2.206\n",
      "[Epoch 6][Batch 20], Speed: 1.134 samples/sec, CrossEntropy=2.533, SmoothL1=2.377\n",
      "[Epoch 6][Batch 40], Speed: 0.800 samples/sec, CrossEntropy=2.593, SmoothL1=2.599\n",
      "[Epoch 6][Batch 60], Speed: 1.275 samples/sec, CrossEntropy=2.586, SmoothL1=2.516\n",
      "[Epoch 6][Batch 80], Speed: 1.110 samples/sec, CrossEntropy=2.586, SmoothL1=2.558\n",
      "[Epoch 6][Batch 100], Speed: 1.197 samples/sec, CrossEntropy=2.562, SmoothL1=2.500\n",
      "[Epoch 6][Batch 120], Speed: 0.793 samples/sec, CrossEntropy=2.561, SmoothL1=2.457\n",
      "[Epoch 6][Batch 140], Speed: 1.112 samples/sec, CrossEntropy=2.541, SmoothL1=2.416\n",
      "[Epoch 6][Batch 160], Speed: 1.594 samples/sec, CrossEntropy=2.537, SmoothL1=2.468\n",
      "[Epoch 6][Batch 180], Speed: 0.936 samples/sec, CrossEntropy=2.529, SmoothL1=2.475\n",
      "[Epoch 6][Batch 200], Speed: 0.558 samples/sec, CrossEntropy=2.547, SmoothL1=2.533\n",
      "[Epoch 6][Batch 220], Speed: 0.845 samples/sec, CrossEntropy=2.544, SmoothL1=2.491\n",
      "[Epoch 6][Batch 240], Speed: 1.021 samples/sec, CrossEntropy=2.544, SmoothL1=2.451\n",
      "[Epoch 6][Batch 260], Speed: 0.909 samples/sec, CrossEntropy=2.542, SmoothL1=2.436\n",
      "[Epoch 6][Batch 280], Speed: 1.231 samples/sec, CrossEntropy=2.540, SmoothL1=2.433\n",
      "[Epoch 6][Batch 300], Speed: 0.587 samples/sec, CrossEntropy=2.541, SmoothL1=2.459\n",
      "[Epoch 6][Batch 320], Speed: 1.154 samples/sec, CrossEntropy=2.531, SmoothL1=2.466\n",
      "[Epoch 6][Batch 340], Speed: 1.590 samples/sec, CrossEntropy=2.526, SmoothL1=2.457\n",
      "[Epoch 6][Batch 360], Speed: 0.843 samples/sec, CrossEntropy=2.525, SmoothL1=2.467\n",
      "[Epoch 6][Batch 380], Speed: 0.978 samples/sec, CrossEntropy=2.521, SmoothL1=2.444\n",
      "[Epoch 7][Batch 0], Speed: 0.929 samples/sec, CrossEntropy=2.574, SmoothL1=3.192\n",
      "[Epoch 7][Batch 20], Speed: 1.374 samples/sec, CrossEntropy=2.484, SmoothL1=2.537\n",
      "[Epoch 7][Batch 40], Speed: 1.064 samples/sec, CrossEntropy=2.469, SmoothL1=2.461\n",
      "[Epoch 7][Batch 60], Speed: 0.725 samples/sec, CrossEntropy=2.450, SmoothL1=2.370\n",
      "[Epoch 7][Batch 80], Speed: 0.873 samples/sec, CrossEntropy=2.481, SmoothL1=2.406\n",
      "[Epoch 7][Batch 100], Speed: 1.169 samples/sec, CrossEntropy=2.491, SmoothL1=2.314\n",
      "[Epoch 7][Batch 120], Speed: 0.657 samples/sec, CrossEntropy=2.491, SmoothL1=2.331\n",
      "[Epoch 7][Batch 140], Speed: 0.809 samples/sec, CrossEntropy=2.488, SmoothL1=2.311\n",
      "[Epoch 7][Batch 160], Speed: 1.599 samples/sec, CrossEntropy=2.483, SmoothL1=2.292\n",
      "[Epoch 7][Batch 180], Speed: 1.320 samples/sec, CrossEntropy=2.480, SmoothL1=2.288\n",
      "[Epoch 7][Batch 200], Speed: 1.061 samples/sec, CrossEntropy=2.481, SmoothL1=2.262\n",
      "[Epoch 7][Batch 220], Speed: 0.960 samples/sec, CrossEntropy=2.480, SmoothL1=2.322\n",
      "[Epoch 7][Batch 240], Speed: 1.131 samples/sec, CrossEntropy=2.487, SmoothL1=2.335\n",
      "[Epoch 7][Batch 260], Speed: 1.160 samples/sec, CrossEntropy=2.481, SmoothL1=2.312\n",
      "[Epoch 7][Batch 280], Speed: 0.894 samples/sec, CrossEntropy=2.476, SmoothL1=2.289\n",
      "[Epoch 7][Batch 300], Speed: 1.187 samples/sec, CrossEntropy=2.482, SmoothL1=2.316\n",
      "[Epoch 7][Batch 320], Speed: 1.212 samples/sec, CrossEntropy=2.478, SmoothL1=2.315\n",
      "[Epoch 7][Batch 340], Speed: 0.899 samples/sec, CrossEntropy=2.480, SmoothL1=2.352\n",
      "[Epoch 7][Batch 360], Speed: 0.792 samples/sec, CrossEntropy=2.477, SmoothL1=2.346\n",
      "[Epoch 7][Batch 380], Speed: 1.046 samples/sec, CrossEntropy=2.480, SmoothL1=2.350\n",
      "[Epoch 8][Batch 0], Speed: 1.013 samples/sec, CrossEntropy=2.461, SmoothL1=3.085\n",
      "[Epoch 8][Batch 20], Speed: 1.183 samples/sec, CrossEntropy=2.436, SmoothL1=2.314\n",
      "[Epoch 8][Batch 40], Speed: 0.741 samples/sec, CrossEntropy=2.394, SmoothL1=2.213\n",
      "[Epoch 8][Batch 60], Speed: 1.126 samples/sec, CrossEntropy=2.441, SmoothL1=2.268\n",
      "[Epoch 8][Batch 80], Speed: 0.965 samples/sec, CrossEntropy=2.445, SmoothL1=2.210\n",
      "[Epoch 8][Batch 100], Speed: 2.195 samples/sec, CrossEntropy=2.448, SmoothL1=2.250\n",
      "[Epoch 8][Batch 120], Speed: 1.075 samples/sec, CrossEntropy=2.440, SmoothL1=2.229\n",
      "[Epoch 8][Batch 140], Speed: 1.042 samples/sec, CrossEntropy=2.440, SmoothL1=2.273\n",
      "[Epoch 8][Batch 160], Speed: 1.073 samples/sec, CrossEntropy=2.440, SmoothL1=2.269\n",
      "[Epoch 8][Batch 180], Speed: 1.150 samples/sec, CrossEntropy=2.426, SmoothL1=2.242\n",
      "[Epoch 8][Batch 200], Speed: 0.766 samples/sec, CrossEntropy=2.418, SmoothL1=2.291\n",
      "[Epoch 8][Batch 220], Speed: 1.323 samples/sec, CrossEntropy=2.406, SmoothL1=2.272\n",
      "[Epoch 8][Batch 240], Speed: 1.432 samples/sec, CrossEntropy=2.401, SmoothL1=2.262\n",
      "[Epoch 8][Batch 260], Speed: 0.689 samples/sec, CrossEntropy=2.411, SmoothL1=2.272\n",
      "[Epoch 8][Batch 280], Speed: 0.836 samples/sec, CrossEntropy=2.418, SmoothL1=2.281\n",
      "[Epoch 8][Batch 300], Speed: 1.741 samples/sec, CrossEntropy=2.413, SmoothL1=2.269\n",
      "[Epoch 8][Batch 320], Speed: 1.270 samples/sec, CrossEntropy=2.412, SmoothL1=2.270\n",
      "[Epoch 8][Batch 340], Speed: 2.071 samples/sec, CrossEntropy=2.410, SmoothL1=2.302\n",
      "[Epoch 8][Batch 360], Speed: 1.128 samples/sec, CrossEntropy=2.411, SmoothL1=2.302\n",
      "[Epoch 8][Batch 380], Speed: 0.986 samples/sec, CrossEntropy=2.411, SmoothL1=2.293\n",
      "[Epoch 9][Batch 0], Speed: 0.891 samples/sec, CrossEntropy=2.478, SmoothL1=3.638\n",
      "[Epoch 9][Batch 20], Speed: 0.916 samples/sec, CrossEntropy=2.417, SmoothL1=2.445\n",
      "[Epoch 9][Batch 40], Speed: 0.737 samples/sec, CrossEntropy=2.446, SmoothL1=2.385\n",
      "[Epoch 9][Batch 60], Speed: 1.135 samples/sec, CrossEntropy=2.495, SmoothL1=2.503\n",
      "[Epoch 9][Batch 80], Speed: 1.178 samples/sec, CrossEntropy=2.483, SmoothL1=2.516\n",
      "[Epoch 9][Batch 100], Speed: 1.551 samples/sec, CrossEntropy=2.476, SmoothL1=2.436\n",
      "[Epoch 9][Batch 120], Speed: 0.860 samples/sec, CrossEntropy=2.460, SmoothL1=2.393\n",
      "[Epoch 9][Batch 140], Speed: 0.881 samples/sec, CrossEntropy=2.461, SmoothL1=2.459\n",
      "[Epoch 9][Batch 160], Speed: 1.507 samples/sec, CrossEntropy=2.444, SmoothL1=2.382\n",
      "[Epoch 9][Batch 180], Speed: 0.918 samples/sec, CrossEntropy=2.436, SmoothL1=2.373\n",
      "[Epoch 9][Batch 200], Speed: 0.780 samples/sec, CrossEntropy=2.438, SmoothL1=2.340\n",
      "[Epoch 9][Batch 220], Speed: 0.904 samples/sec, CrossEntropy=2.430, SmoothL1=2.313\n",
      "[Epoch 9][Batch 240], Speed: 1.142 samples/sec, CrossEntropy=2.421, SmoothL1=2.279\n",
      "[Epoch 9][Batch 260], Speed: 0.805 samples/sec, CrossEntropy=2.410, SmoothL1=2.294\n",
      "[Epoch 9][Batch 280], Speed: 0.821 samples/sec, CrossEntropy=2.403, SmoothL1=2.290\n",
      "[Epoch 9][Batch 300], Speed: 0.807 samples/sec, CrossEntropy=2.397, SmoothL1=2.289\n",
      "[Epoch 9][Batch 320], Speed: 1.081 samples/sec, CrossEntropy=2.400, SmoothL1=2.295\n",
      "[Epoch 9][Batch 340], Speed: 1.029 samples/sec, CrossEntropy=2.399, SmoothL1=2.288\n",
      "[Epoch 9][Batch 360], Speed: 0.929 samples/sec, CrossEntropy=2.395, SmoothL1=2.297\n",
      "[Epoch 9][Batch 380], Speed: 0.970 samples/sec, CrossEntropy=2.399, SmoothL1=2.293\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "[Epoch 10][Batch 0], Speed: 1.509 samples/sec, CrossEntropy=2.504, SmoothL1=1.689\n",
      "[Epoch 10][Batch 20], Speed: 0.915 samples/sec, CrossEntropy=2.311, SmoothL1=2.273\n",
      "[Epoch 10][Batch 40], Speed: 1.664 samples/sec, CrossEntropy=2.396, SmoothL1=2.386\n",
      "[Epoch 10][Batch 60], Speed: 1.311 samples/sec, CrossEntropy=2.366, SmoothL1=2.328\n",
      "[Epoch 10][Batch 80], Speed: 1.471 samples/sec, CrossEntropy=2.334, SmoothL1=2.248\n",
      "[Epoch 10][Batch 100], Speed: 0.905 samples/sec, CrossEntropy=2.339, SmoothL1=2.263\n",
      "[Epoch 10][Batch 120], Speed: 1.183 samples/sec, CrossEntropy=2.336, SmoothL1=2.191\n",
      "[Epoch 10][Batch 140], Speed: 1.159 samples/sec, CrossEntropy=2.341, SmoothL1=2.244\n",
      "[Epoch 10][Batch 160], Speed: 0.936 samples/sec, CrossEntropy=2.348, SmoothL1=2.229\n",
      "[Epoch 10][Batch 180], Speed: 1.113 samples/sec, CrossEntropy=2.341, SmoothL1=2.201\n",
      "[Epoch 10][Batch 200], Speed: 1.260 samples/sec, CrossEntropy=2.340, SmoothL1=2.212\n",
      "[Epoch 10][Batch 220], Speed: 1.085 samples/sec, CrossEntropy=2.346, SmoothL1=2.198\n",
      "[Epoch 10][Batch 240], Speed: 0.742 samples/sec, CrossEntropy=2.353, SmoothL1=2.193\n",
      "[Epoch 10][Batch 260], Speed: 1.331 samples/sec, CrossEntropy=2.353, SmoothL1=2.186\n",
      "[Epoch 10][Batch 280], Speed: 0.934 samples/sec, CrossEntropy=2.348, SmoothL1=2.199\n",
      "[Epoch 10][Batch 300], Speed: 0.765 samples/sec, CrossEntropy=2.348, SmoothL1=2.193\n",
      "[Epoch 10][Batch 320], Speed: 1.228 samples/sec, CrossEntropy=2.347, SmoothL1=2.190\n",
      "[Epoch 10][Batch 340], Speed: 1.164 samples/sec, CrossEntropy=2.343, SmoothL1=2.175\n",
      "[Epoch 10][Batch 360], Speed: 1.252 samples/sec, CrossEntropy=2.337, SmoothL1=2.160\n",
      "[Epoch 10][Batch 380], Speed: 1.642 samples/sec, CrossEntropy=2.333, SmoothL1=2.168\n",
      "[Epoch 11][Batch 0], Speed: 0.959 samples/sec, CrossEntropy=2.205, SmoothL1=1.734\n",
      "[Epoch 11][Batch 20], Speed: 0.879 samples/sec, CrossEntropy=2.352, SmoothL1=2.110\n",
      "[Epoch 11][Batch 40], Speed: 0.586 samples/sec, CrossEntropy=2.373, SmoothL1=2.126\n",
      "[Epoch 11][Batch 60], Speed: 0.785 samples/sec, CrossEntropy=2.368, SmoothL1=2.157\n",
      "[Epoch 11][Batch 80], Speed: 1.114 samples/sec, CrossEntropy=2.354, SmoothL1=2.228\n",
      "[Epoch 11][Batch 100], Speed: 1.785 samples/sec, CrossEntropy=2.363, SmoothL1=2.238\n",
      "[Epoch 11][Batch 120], Speed: 0.864 samples/sec, CrossEntropy=2.340, SmoothL1=2.207\n",
      "[Epoch 11][Batch 140], Speed: 0.919 samples/sec, CrossEntropy=2.337, SmoothL1=2.228\n",
      "[Epoch 11][Batch 160], Speed: 1.112 samples/sec, CrossEntropy=2.326, SmoothL1=2.197\n",
      "[Epoch 11][Batch 180], Speed: 1.151 samples/sec, CrossEntropy=2.336, SmoothL1=2.169\n",
      "[Epoch 11][Batch 200], Speed: 0.756 samples/sec, CrossEntropy=2.332, SmoothL1=2.164\n",
      "[Epoch 11][Batch 220], Speed: 0.797 samples/sec, CrossEntropy=2.329, SmoothL1=2.125\n",
      "[Epoch 11][Batch 240], Speed: 1.066 samples/sec, CrossEntropy=2.327, SmoothL1=2.132\n",
      "[Epoch 11][Batch 260], Speed: 1.034 samples/sec, CrossEntropy=2.325, SmoothL1=2.130\n",
      "[Epoch 11][Batch 280], Speed: 1.332 samples/sec, CrossEntropy=2.315, SmoothL1=2.121\n",
      "[Epoch 11][Batch 300], Speed: 1.190 samples/sec, CrossEntropy=2.317, SmoothL1=2.128\n",
      "[Epoch 11][Batch 320], Speed: 0.711 samples/sec, CrossEntropy=2.313, SmoothL1=2.122\n",
      "[Epoch 11][Batch 340], Speed: 0.924 samples/sec, CrossEntropy=2.308, SmoothL1=2.101\n",
      "[Epoch 11][Batch 360], Speed: 1.278 samples/sec, CrossEntropy=2.303, SmoothL1=2.106\n",
      "[Epoch 11][Batch 380], Speed: 0.965 samples/sec, CrossEntropy=2.300, SmoothL1=2.112\n",
      "[Epoch 12][Batch 0], Speed: 0.822 samples/sec, CrossEntropy=2.218, SmoothL1=1.358\n",
      "[Epoch 12][Batch 20], Speed: 1.053 samples/sec, CrossEntropy=2.211, SmoothL1=2.452\n",
      "[Epoch 12][Batch 40], Speed: 1.021 samples/sec, CrossEntropy=2.223, SmoothL1=2.316\n",
      "[Epoch 12][Batch 60], Speed: 1.078 samples/sec, CrossEntropy=2.248, SmoothL1=2.324\n",
      "[Epoch 12][Batch 80], Speed: 0.956 samples/sec, CrossEntropy=2.258, SmoothL1=2.247\n",
      "[Epoch 12][Batch 100], Speed: 1.867 samples/sec, CrossEntropy=2.254, SmoothL1=2.152\n",
      "[Epoch 12][Batch 120], Speed: 1.089 samples/sec, CrossEntropy=2.264, SmoothL1=2.193\n",
      "[Epoch 12][Batch 140], Speed: 1.409 samples/sec, CrossEntropy=2.265, SmoothL1=2.195\n",
      "[Epoch 12][Batch 160], Speed: 1.999 samples/sec, CrossEntropy=2.266, SmoothL1=2.199\n",
      "[Epoch 12][Batch 180], Speed: 0.811 samples/sec, CrossEntropy=2.267, SmoothL1=2.196\n",
      "[Epoch 12][Batch 200], Speed: 0.874 samples/sec, CrossEntropy=2.274, SmoothL1=2.209\n",
      "[Epoch 12][Batch 220], Speed: 0.773 samples/sec, CrossEntropy=2.286, SmoothL1=2.230\n",
      "[Epoch 12][Batch 240], Speed: 1.582 samples/sec, CrossEntropy=2.290, SmoothL1=2.233\n",
      "[Epoch 12][Batch 260], Speed: 1.251 samples/sec, CrossEntropy=2.289, SmoothL1=2.221\n",
      "[Epoch 12][Batch 280], Speed: 0.731 samples/sec, CrossEntropy=2.288, SmoothL1=2.220\n",
      "[Epoch 12][Batch 300], Speed: 1.526 samples/sec, CrossEntropy=2.284, SmoothL1=2.211\n",
      "[Epoch 12][Batch 320], Speed: 1.110 samples/sec, CrossEntropy=2.281, SmoothL1=2.234\n",
      "[Epoch 12][Batch 340], Speed: 0.583 samples/sec, CrossEntropy=2.289, SmoothL1=2.236\n",
      "[Epoch 12][Batch 360], Speed: 0.993 samples/sec, CrossEntropy=2.280, SmoothL1=2.219\n",
      "[Epoch 12][Batch 380], Speed: 1.280 samples/sec, CrossEntropy=2.277, SmoothL1=2.195\n",
      "[Epoch 13][Batch 0], Speed: 0.669 samples/sec, CrossEntropy=2.920, SmoothL1=3.534\n",
      "[Epoch 13][Batch 20], Speed: 1.364 samples/sec, CrossEntropy=2.280, SmoothL1=1.786\n",
      "[Epoch 13][Batch 40], Speed: 1.067 samples/sec, CrossEntropy=2.260, SmoothL1=2.123\n",
      "[Epoch 13][Batch 60], Speed: 0.914 samples/sec, CrossEntropy=2.307, SmoothL1=2.132\n",
      "[Epoch 13][Batch 80], Speed: 0.867 samples/sec, CrossEntropy=2.302, SmoothL1=2.067\n",
      "[Epoch 13][Batch 100], Speed: 1.382 samples/sec, CrossEntropy=2.296, SmoothL1=2.090\n",
      "[Epoch 13][Batch 120], Speed: 0.927 samples/sec, CrossEntropy=2.278, SmoothL1=2.060\n",
      "[Epoch 13][Batch 140], Speed: 0.650 samples/sec, CrossEntropy=2.285, SmoothL1=2.088\n",
      "[Epoch 13][Batch 160], Speed: 0.732 samples/sec, CrossEntropy=2.277, SmoothL1=2.076\n",
      "[Epoch 13][Batch 180], Speed: 1.140 samples/sec, CrossEntropy=2.278, SmoothL1=2.126\n",
      "[Epoch 13][Batch 200], Speed: 0.900 samples/sec, CrossEntropy=2.275, SmoothL1=2.120\n",
      "[Epoch 13][Batch 220], Speed: 0.804 samples/sec, CrossEntropy=2.266, SmoothL1=2.124\n",
      "[Epoch 13][Batch 240], Speed: 0.841 samples/sec, CrossEntropy=2.270, SmoothL1=2.138\n",
      "[Epoch 13][Batch 260], Speed: 2.163 samples/sec, CrossEntropy=2.266, SmoothL1=2.096\n",
      "[Epoch 13][Batch 280], Speed: 0.796 samples/sec, CrossEntropy=2.272, SmoothL1=2.112\n",
      "[Epoch 13][Batch 300], Speed: 1.359 samples/sec, CrossEntropy=2.268, SmoothL1=2.092\n",
      "[Epoch 13][Batch 320], Speed: 1.152 samples/sec, CrossEntropy=2.267, SmoothL1=2.106\n",
      "[Epoch 13][Batch 340], Speed: 1.126 samples/sec, CrossEntropy=2.265, SmoothL1=2.110\n",
      "[Epoch 13][Batch 360], Speed: 1.280 samples/sec, CrossEntropy=2.259, SmoothL1=2.123\n",
      "[Epoch 13][Batch 380], Speed: 1.255 samples/sec, CrossEntropy=2.259, SmoothL1=2.106\n",
      "[Epoch 14][Batch 0], Speed: 2.063 samples/sec, CrossEntropy=1.662, SmoothL1=1.085\n",
      "[Epoch 14][Batch 20], Speed: 1.867 samples/sec, CrossEntropy=2.140, SmoothL1=2.404\n",
      "[Epoch 14][Batch 40], Speed: 0.925 samples/sec, CrossEntropy=2.148, SmoothL1=2.189\n",
      "[Epoch 14][Batch 60], Speed: 1.068 samples/sec, CrossEntropy=2.154, SmoothL1=2.133\n",
      "[Epoch 14][Batch 80], Speed: 1.002 samples/sec, CrossEntropy=2.164, SmoothL1=2.031\n",
      "[Epoch 14][Batch 100], Speed: 1.256 samples/sec, CrossEntropy=2.174, SmoothL1=1.980\n",
      "[Epoch 14][Batch 120], Speed: 0.674 samples/sec, CrossEntropy=2.182, SmoothL1=2.051\n",
      "[Epoch 14][Batch 140], Speed: 1.173 samples/sec, CrossEntropy=2.200, SmoothL1=2.078\n",
      "[Epoch 14][Batch 160], Speed: 0.622 samples/sec, CrossEntropy=2.218, SmoothL1=2.065\n",
      "[Epoch 14][Batch 180], Speed: 1.776 samples/sec, CrossEntropy=2.229, SmoothL1=2.074\n",
      "[Epoch 14][Batch 200], Speed: 1.446 samples/sec, CrossEntropy=2.224, SmoothL1=2.040\n",
      "[Epoch 14][Batch 220], Speed: 0.901 samples/sec, CrossEntropy=2.222, SmoothL1=2.076\n",
      "[Epoch 14][Batch 240], Speed: 0.760 samples/sec, CrossEntropy=2.224, SmoothL1=2.065\n",
      "[Epoch 14][Batch 260], Speed: 1.508 samples/sec, CrossEntropy=2.222, SmoothL1=2.085\n",
      "[Epoch 14][Batch 280], Speed: 1.247 samples/sec, CrossEntropy=2.220, SmoothL1=2.076\n",
      "[Epoch 14][Batch 300], Speed: 1.247 samples/sec, CrossEntropy=2.222, SmoothL1=2.068\n",
      "[Epoch 14][Batch 320], Speed: 1.146 samples/sec, CrossEntropy=2.219, SmoothL1=2.072\n",
      "[Epoch 14][Batch 340], Speed: 2.004 samples/sec, CrossEntropy=2.217, SmoothL1=2.094\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "[Epoch 14][Batch 360], Speed: 1.356 samples/sec, CrossEntropy=2.219, SmoothL1=2.089\n",
      "[Epoch 14][Batch 380], Speed: 1.156 samples/sec, CrossEntropy=2.216, SmoothL1=2.078\n",
      "[Epoch 15][Batch 0], Speed: 1.076 samples/sec, CrossEntropy=2.129, SmoothL1=2.103\n",
      "[Epoch 15][Batch 20], Speed: 0.853 samples/sec, CrossEntropy=2.209, SmoothL1=2.051\n",
      "[Epoch 15][Batch 40], Speed: 0.924 samples/sec, CrossEntropy=2.214, SmoothL1=1.899\n",
      "[Epoch 15][Batch 60], Speed: 0.960 samples/sec, CrossEntropy=2.213, SmoothL1=1.955\n",
      "[Epoch 15][Batch 80], Speed: 0.881 samples/sec, CrossEntropy=2.220, SmoothL1=1.962\n",
      "[Epoch 15][Batch 100], Speed: 0.806 samples/sec, CrossEntropy=2.224, SmoothL1=1.999\n",
      "[Epoch 15][Batch 120], Speed: 1.132 samples/sec, CrossEntropy=2.217, SmoothL1=2.009\n",
      "[Epoch 15][Batch 140], Speed: 1.480 samples/sec, CrossEntropy=2.218, SmoothL1=2.045\n",
      "[Epoch 15][Batch 160], Speed: 1.159 samples/sec, CrossEntropy=2.220, SmoothL1=2.054\n",
      "[Epoch 15][Batch 180], Speed: 0.956 samples/sec, CrossEntropy=2.231, SmoothL1=2.035\n",
      "[Epoch 15][Batch 200], Speed: 1.507 samples/sec, CrossEntropy=2.225, SmoothL1=2.015\n",
      "[Epoch 15][Batch 220], Speed: 0.594 samples/sec, CrossEntropy=2.222, SmoothL1=2.037\n",
      "[Epoch 15][Batch 240], Speed: 0.969 samples/sec, CrossEntropy=2.217, SmoothL1=2.026\n",
      "[Epoch 15][Batch 260], Speed: 1.910 samples/sec, CrossEntropy=2.214, SmoothL1=2.014\n",
      "[Epoch 15][Batch 280], Speed: 1.083 samples/sec, CrossEntropy=2.212, SmoothL1=2.005\n",
      "[Epoch 15][Batch 300], Speed: 1.080 samples/sec, CrossEntropy=2.209, SmoothL1=2.028\n",
      "[Epoch 15][Batch 320], Speed: 0.807 samples/sec, CrossEntropy=2.207, SmoothL1=2.030\n",
      "[Epoch 15][Batch 340], Speed: 1.029 samples/sec, CrossEntropy=2.204, SmoothL1=2.012\n",
      "[Epoch 15][Batch 360], Speed: 1.278 samples/sec, CrossEntropy=2.203, SmoothL1=2.016\n",
      "[Epoch 15][Batch 380], Speed: 2.068 samples/sec, CrossEntropy=2.204, SmoothL1=2.025\n",
      "[Epoch 16][Batch 0], Speed: 0.864 samples/sec, CrossEntropy=2.803, SmoothL1=1.006\n",
      "[Epoch 16][Batch 20], Speed: 1.271 samples/sec, CrossEntropy=2.211, SmoothL1=1.942\n",
      "[Epoch 16][Batch 40], Speed: 1.203 samples/sec, CrossEntropy=2.211, SmoothL1=2.007\n",
      "[Epoch 16][Batch 60], Speed: 0.903 samples/sec, CrossEntropy=2.200, SmoothL1=1.990\n",
      "[Epoch 16][Batch 80], Speed: 0.990 samples/sec, CrossEntropy=2.204, SmoothL1=2.040\n",
      "[Epoch 16][Batch 100], Speed: 0.988 samples/sec, CrossEntropy=2.214, SmoothL1=2.112\n",
      "[Epoch 16][Batch 120], Speed: 0.821 samples/sec, CrossEntropy=2.221, SmoothL1=2.111\n",
      "[Epoch 16][Batch 140], Speed: 0.982 samples/sec, CrossEntropy=2.227, SmoothL1=2.163\n",
      "[Epoch 16][Batch 160], Speed: 1.295 samples/sec, CrossEntropy=2.228, SmoothL1=2.148\n",
      "[Epoch 16][Batch 180], Speed: 0.494 samples/sec, CrossEntropy=2.218, SmoothL1=2.112\n",
      "[Epoch 16][Batch 200], Speed: 1.025 samples/sec, CrossEntropy=2.215, SmoothL1=2.089\n",
      "[Epoch 16][Batch 220], Speed: 0.683 samples/sec, CrossEntropy=2.218, SmoothL1=2.084\n",
      "[Epoch 16][Batch 240], Speed: 1.296 samples/sec, CrossEntropy=2.219, SmoothL1=2.106\n",
      "[Epoch 16][Batch 260], Speed: 1.021 samples/sec, CrossEntropy=2.211, SmoothL1=2.099\n",
      "[Epoch 16][Batch 280], Speed: 0.683 samples/sec, CrossEntropy=2.213, SmoothL1=2.079\n",
      "[Epoch 16][Batch 300], Speed: 0.992 samples/sec, CrossEntropy=2.217, SmoothL1=2.098\n",
      "[Epoch 16][Batch 320], Speed: 0.554 samples/sec, CrossEntropy=2.215, SmoothL1=2.103\n",
      "[Epoch 16][Batch 340], Speed: 2.183 samples/sec, CrossEntropy=2.207, SmoothL1=2.080\n",
      "[Epoch 16][Batch 360], Speed: 0.928 samples/sec, CrossEntropy=2.210, SmoothL1=2.066\n",
      "[Epoch 16][Batch 380], Speed: 0.838 samples/sec, CrossEntropy=2.208, SmoothL1=2.052\n",
      "[Epoch 17][Batch 0], Speed: 1.472 samples/sec, CrossEntropy=1.861, SmoothL1=2.816\n",
      "[Epoch 17][Batch 20], Speed: 1.203 samples/sec, CrossEntropy=2.181, SmoothL1=2.091\n",
      "[Epoch 17][Batch 40], Speed: 0.829 samples/sec, CrossEntropy=2.176, SmoothL1=2.166\n",
      "[Epoch 17][Batch 60], Speed: 1.075 samples/sec, CrossEntropy=2.163, SmoothL1=2.004\n",
      "[Epoch 17][Batch 80], Speed: 1.686 samples/sec, CrossEntropy=2.149, SmoothL1=1.925\n",
      "[Epoch 17][Batch 100], Speed: 1.006 samples/sec, CrossEntropy=2.155, SmoothL1=1.932\n",
      "[Epoch 17][Batch 120], Speed: 1.399 samples/sec, CrossEntropy=2.172, SmoothL1=1.950\n",
      "[Epoch 17][Batch 140], Speed: 1.018 samples/sec, CrossEntropy=2.185, SmoothL1=2.010\n",
      "[Epoch 17][Batch 160], Speed: 0.572 samples/sec, CrossEntropy=2.191, SmoothL1=2.028\n",
      "[Epoch 17][Batch 180], Speed: 0.766 samples/sec, CrossEntropy=2.194, SmoothL1=2.053\n",
      "[Epoch 17][Batch 200], Speed: 1.093 samples/sec, CrossEntropy=2.198, SmoothL1=2.029\n",
      "[Epoch 17][Batch 220], Speed: 1.589 samples/sec, CrossEntropy=2.200, SmoothL1=2.006\n",
      "[Epoch 17][Batch 240], Speed: 1.021 samples/sec, CrossEntropy=2.201, SmoothL1=2.052\n",
      "[Epoch 17][Batch 260], Speed: 1.430 samples/sec, CrossEntropy=2.193, SmoothL1=2.054\n",
      "[Epoch 17][Batch 280], Speed: 0.966 samples/sec, CrossEntropy=2.189, SmoothL1=2.042\n",
      "[Epoch 17][Batch 300], Speed: 0.880 samples/sec, CrossEntropy=2.189, SmoothL1=2.053\n",
      "[Epoch 17][Batch 320], Speed: 0.631 samples/sec, CrossEntropy=2.190, SmoothL1=2.062\n",
      "[Epoch 17][Batch 340], Speed: 1.054 samples/sec, CrossEntropy=2.191, SmoothL1=2.049\n",
      "[Epoch 17][Batch 360], Speed: 1.702 samples/sec, CrossEntropy=2.189, SmoothL1=2.042\n",
      "[Epoch 17][Batch 380], Speed: 1.451 samples/sec, CrossEntropy=2.181, SmoothL1=2.032\n",
      "[Epoch 18][Batch 0], Speed: 1.324 samples/sec, CrossEntropy=1.848, SmoothL1=3.555\n",
      "[Epoch 18][Batch 20], Speed: 0.838 samples/sec, CrossEntropy=2.214, SmoothL1=2.144\n",
      "[Epoch 18][Batch 40], Speed: 1.138 samples/sec, CrossEntropy=2.208, SmoothL1=2.163\n",
      "[Epoch 18][Batch 60], Speed: 0.674 samples/sec, CrossEntropy=2.213, SmoothL1=2.170\n",
      "[Epoch 18][Batch 80], Speed: 1.615 samples/sec, CrossEntropy=2.212, SmoothL1=2.144\n",
      "[Epoch 18][Batch 100], Speed: 1.207 samples/sec, CrossEntropy=2.199, SmoothL1=2.160\n",
      "[Epoch 18][Batch 120], Speed: 0.696 samples/sec, CrossEntropy=2.189, SmoothL1=2.086\n",
      "[Epoch 18][Batch 140], Speed: 0.904 samples/sec, CrossEntropy=2.183, SmoothL1=2.067\n",
      "[Epoch 18][Batch 160], Speed: 2.100 samples/sec, CrossEntropy=2.174, SmoothL1=2.092\n",
      "[Epoch 18][Batch 180], Speed: 1.292 samples/sec, CrossEntropy=2.177, SmoothL1=2.062\n",
      "[Epoch 18][Batch 200], Speed: 0.715 samples/sec, CrossEntropy=2.170, SmoothL1=2.032\n",
      "[Epoch 18][Batch 220], Speed: 1.304 samples/sec, CrossEntropy=2.162, SmoothL1=2.034\n",
      "[Epoch 18][Batch 240], Speed: 1.420 samples/sec, CrossEntropy=2.165, SmoothL1=2.056\n",
      "[Epoch 18][Batch 260], Speed: 0.864 samples/sec, CrossEntropy=2.155, SmoothL1=2.051\n",
      "[Epoch 18][Batch 280], Speed: 1.117 samples/sec, CrossEntropy=2.154, SmoothL1=2.058\n",
      "[Epoch 18][Batch 300], Speed: 0.984 samples/sec, CrossEntropy=2.151, SmoothL1=2.052\n",
      "[Epoch 18][Batch 320], Speed: 0.975 samples/sec, CrossEntropy=2.152, SmoothL1=2.061\n",
      "[Epoch 18][Batch 340], Speed: 0.602 samples/sec, CrossEntropy=2.147, SmoothL1=2.050\n",
      "[Epoch 18][Batch 360], Speed: 0.718 samples/sec, CrossEntropy=2.145, SmoothL1=2.029\n",
      "[Epoch 18][Batch 380], Speed: 0.681 samples/sec, CrossEntropy=2.139, SmoothL1=2.028\n",
      "[Epoch 19][Batch 0], Speed: 1.128 samples/sec, CrossEntropy=1.853, SmoothL1=3.007\n",
      "[Epoch 19][Batch 20], Speed: 0.973 samples/sec, CrossEntropy=2.088, SmoothL1=1.899\n",
      "[Epoch 19][Batch 40], Speed: 1.497 samples/sec, CrossEntropy=2.094, SmoothL1=2.035\n",
      "[Epoch 19][Batch 60], Speed: 1.262 samples/sec, CrossEntropy=2.104, SmoothL1=2.125\n",
      "[Epoch 19][Batch 80], Speed: 1.907 samples/sec, CrossEntropy=2.110, SmoothL1=2.118\n",
      "[Epoch 19][Batch 100], Speed: 1.184 samples/sec, CrossEntropy=2.104, SmoothL1=2.073\n",
      "[Epoch 19][Batch 120], Speed: 0.841 samples/sec, CrossEntropy=2.112, SmoothL1=2.076\n",
      "[Epoch 19][Batch 140], Speed: 0.487 samples/sec, CrossEntropy=2.116, SmoothL1=2.127\n",
      "[Epoch 19][Batch 160], Speed: 0.945 samples/sec, CrossEntropy=2.116, SmoothL1=2.090\n",
      "[Epoch 19][Batch 180], Speed: 0.895 samples/sec, CrossEntropy=2.118, SmoothL1=2.097\n",
      "[Epoch 19][Batch 200], Speed: 1.078 samples/sec, CrossEntropy=2.111, SmoothL1=2.080\n",
      "[Epoch 19][Batch 220], Speed: 0.774 samples/sec, CrossEntropy=2.111, SmoothL1=2.087\n",
      "[Epoch 19][Batch 240], Speed: 1.038 samples/sec, CrossEntropy=2.109, SmoothL1=2.061\n",
      "[Epoch 19][Batch 260], Speed: 0.643 samples/sec, CrossEntropy=2.121, SmoothL1=2.070\n",
      "[Epoch 19][Batch 280], Speed: 1.610 samples/sec, CrossEntropy=2.117, SmoothL1=2.057\n",
      "[Epoch 19][Batch 300], Speed: 1.307 samples/sec, CrossEntropy=2.117, SmoothL1=2.048\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "[Epoch 19][Batch 320], Speed: 0.838 samples/sec, CrossEntropy=2.119, SmoothL1=2.036\n",
      "[Epoch 19][Batch 340], Speed: 0.443 samples/sec, CrossEntropy=2.121, SmoothL1=2.034\n",
      "[Epoch 19][Batch 360], Speed: 0.955 samples/sec, CrossEntropy=2.119, SmoothL1=2.038\n",
      "[Epoch 19][Batch 380], Speed: 1.150 samples/sec, CrossEntropy=2.115, SmoothL1=2.037\n",
      "[Epoch 20][Batch 0], Speed: 1.793 samples/sec, CrossEntropy=2.057, SmoothL1=2.209\n",
      "[Epoch 20][Batch 20], Speed: 0.968 samples/sec, CrossEntropy=1.975, SmoothL1=2.014\n",
      "[Epoch 20][Batch 40], Speed: 0.768 samples/sec, CrossEntropy=1.998, SmoothL1=2.182\n",
      "[Epoch 20][Batch 60], Speed: 0.811 samples/sec, CrossEntropy=2.073, SmoothL1=2.127\n",
      "[Epoch 20][Batch 80], Speed: 0.680 samples/sec, CrossEntropy=2.065, SmoothL1=2.045\n",
      "[Epoch 20][Batch 100], Speed: 1.548 samples/sec, CrossEntropy=2.102, SmoothL1=2.175\n",
      "[Epoch 20][Batch 120], Speed: 1.267 samples/sec, CrossEntropy=2.094, SmoothL1=2.152\n",
      "[Epoch 20][Batch 140], Speed: 1.009 samples/sec, CrossEntropy=2.104, SmoothL1=2.129\n",
      "[Epoch 20][Batch 160], Speed: 0.722 samples/sec, CrossEntropy=2.092, SmoothL1=2.096\n",
      "[Epoch 20][Batch 180], Speed: 0.964 samples/sec, CrossEntropy=2.084, SmoothL1=2.072\n",
      "[Epoch 20][Batch 200], Speed: 1.586 samples/sec, CrossEntropy=2.093, SmoothL1=2.054\n",
      "[Epoch 20][Batch 220], Speed: 1.278 samples/sec, CrossEntropy=2.092, SmoothL1=2.055\n",
      "[Epoch 20][Batch 240], Speed: 0.915 samples/sec, CrossEntropy=2.094, SmoothL1=2.050\n",
      "[Epoch 20][Batch 260], Speed: 0.654 samples/sec, CrossEntropy=2.092, SmoothL1=2.033\n",
      "[Epoch 20][Batch 280], Speed: 1.764 samples/sec, CrossEntropy=2.089, SmoothL1=2.007\n",
      "[Epoch 20][Batch 300], Speed: 1.408 samples/sec, CrossEntropy=2.090, SmoothL1=2.002\n",
      "[Epoch 20][Batch 320], Speed: 0.791 samples/sec, CrossEntropy=2.089, SmoothL1=1.994\n",
      "[Epoch 20][Batch 340], Speed: 0.985 samples/sec, CrossEntropy=2.092, SmoothL1=2.002\n",
      "[Epoch 20][Batch 360], Speed: 0.657 samples/sec, CrossEntropy=2.093, SmoothL1=2.005\n",
      "[Epoch 20][Batch 380], Speed: 1.275 samples/sec, CrossEntropy=2.093, SmoothL1=1.999\n",
      "[Epoch 21][Batch 0], Speed: 0.778 samples/sec, CrossEntropy=2.265, SmoothL1=1.497\n",
      "[Epoch 21][Batch 20], Speed: 1.480 samples/sec, CrossEntropy=2.131, SmoothL1=1.944\n",
      "[Epoch 21][Batch 40], Speed: 2.327 samples/sec, CrossEntropy=2.130, SmoothL1=1.924\n",
      "[Epoch 21][Batch 60], Speed: 1.470 samples/sec, CrossEntropy=2.133, SmoothL1=1.929\n",
      "[Epoch 21][Batch 80], Speed: 1.127 samples/sec, CrossEntropy=2.121, SmoothL1=1.956\n",
      "[Epoch 21][Batch 100], Speed: 1.218 samples/sec, CrossEntropy=2.107, SmoothL1=1.921\n",
      "[Epoch 21][Batch 120], Speed: 1.378 samples/sec, CrossEntropy=2.112, SmoothL1=1.947\n",
      "[Epoch 21][Batch 140], Speed: 0.723 samples/sec, CrossEntropy=2.113, SmoothL1=1.929\n",
      "[Epoch 21][Batch 160], Speed: 1.421 samples/sec, CrossEntropy=2.093, SmoothL1=1.916\n",
      "[Epoch 21][Batch 180], Speed: 0.853 samples/sec, CrossEntropy=2.086, SmoothL1=1.896\n",
      "[Epoch 21][Batch 200], Speed: 1.090 samples/sec, CrossEntropy=2.094, SmoothL1=1.915\n",
      "[Epoch 21][Batch 220], Speed: 1.524 samples/sec, CrossEntropy=2.098, SmoothL1=1.922\n",
      "[Epoch 21][Batch 240], Speed: 1.401 samples/sec, CrossEntropy=2.094, SmoothL1=1.933\n",
      "[Epoch 21][Batch 260], Speed: 1.064 samples/sec, CrossEntropy=2.098, SmoothL1=1.969\n",
      "[Epoch 21][Batch 280], Speed: 1.363 samples/sec, CrossEntropy=2.099, SmoothL1=1.967\n",
      "[Epoch 21][Batch 300], Speed: 1.720 samples/sec, CrossEntropy=2.104, SmoothL1=1.956\n",
      "[Epoch 21][Batch 320], Speed: 1.002 samples/sec, CrossEntropy=2.101, SmoothL1=1.942\n",
      "[Epoch 21][Batch 340], Speed: 0.780 samples/sec, CrossEntropy=2.099, SmoothL1=1.958\n",
      "[Epoch 21][Batch 360], Speed: 0.826 samples/sec, CrossEntropy=2.093, SmoothL1=1.950\n",
      "[Epoch 21][Batch 380], Speed: 1.127 samples/sec, CrossEntropy=2.094, SmoothL1=1.946\n",
      "[Epoch 22][Batch 0], Speed: 1.077 samples/sec, CrossEntropy=2.342, SmoothL1=1.565\n",
      "[Epoch 22][Batch 20], Speed: 1.058 samples/sec, CrossEntropy=2.201, SmoothL1=2.103\n",
      "[Epoch 22][Batch 40], Speed: 1.225 samples/sec, CrossEntropy=2.131, SmoothL1=2.103\n",
      "[Epoch 22][Batch 60], Speed: 0.871 samples/sec, CrossEntropy=2.104, SmoothL1=2.095\n",
      "[Epoch 22][Batch 80], Speed: 1.034 samples/sec, CrossEntropy=2.096, SmoothL1=2.020\n",
      "[Epoch 22][Batch 100], Speed: 0.844 samples/sec, CrossEntropy=2.087, SmoothL1=2.080\n",
      "[Epoch 22][Batch 120], Speed: 0.998 samples/sec, CrossEntropy=2.080, SmoothL1=2.121\n",
      "[Epoch 22][Batch 140], Speed: 0.981 samples/sec, CrossEntropy=2.078, SmoothL1=2.072\n",
      "[Epoch 22][Batch 160], Speed: 1.890 samples/sec, CrossEntropy=2.083, SmoothL1=2.068\n",
      "[Epoch 22][Batch 180], Speed: 1.048 samples/sec, CrossEntropy=2.077, SmoothL1=2.024\n",
      "[Epoch 22][Batch 200], Speed: 1.006 samples/sec, CrossEntropy=2.080, SmoothL1=2.024\n",
      "[Epoch 22][Batch 220], Speed: 1.681 samples/sec, CrossEntropy=2.070, SmoothL1=2.032\n",
      "[Epoch 22][Batch 240], Speed: 1.562 samples/sec, CrossEntropy=2.060, SmoothL1=1.997\n",
      "[Epoch 22][Batch 260], Speed: 1.092 samples/sec, CrossEntropy=2.057, SmoothL1=1.984\n",
      "[Epoch 22][Batch 280], Speed: 1.320 samples/sec, CrossEntropy=2.066, SmoothL1=1.989\n",
      "[Epoch 22][Batch 300], Speed: 1.071 samples/sec, CrossEntropy=2.067, SmoothL1=1.986\n",
      "[Epoch 22][Batch 320], Speed: 1.083 samples/sec, CrossEntropy=2.066, SmoothL1=1.968\n",
      "[Epoch 22][Batch 340], Speed: 1.175 samples/sec, CrossEntropy=2.065, SmoothL1=1.967\n",
      "[Epoch 22][Batch 360], Speed: 0.696 samples/sec, CrossEntropy=2.061, SmoothL1=1.985\n",
      "[Epoch 22][Batch 380], Speed: 1.486 samples/sec, CrossEntropy=2.063, SmoothL1=1.988\n",
      "[Epoch 23][Batch 0], Speed: 0.844 samples/sec, CrossEntropy=2.201, SmoothL1=2.889\n",
      "[Epoch 23][Batch 20], Speed: 0.602 samples/sec, CrossEntropy=2.153, SmoothL1=2.210\n",
      "[Epoch 23][Batch 40], Speed: 1.078 samples/sec, CrossEntropy=2.068, SmoothL1=1.950\n",
      "[Epoch 23][Batch 60], Speed: 0.865 samples/sec, CrossEntropy=2.069, SmoothL1=1.908\n",
      "[Epoch 23][Batch 80], Speed: 1.209 samples/sec, CrossEntropy=2.048, SmoothL1=1.780\n",
      "[Epoch 23][Batch 100], Speed: 0.801 samples/sec, CrossEntropy=2.063, SmoothL1=1.951\n",
      "[Epoch 23][Batch 120], Speed: 1.603 samples/sec, CrossEntropy=2.056, SmoothL1=1.922\n",
      "[Epoch 23][Batch 140], Speed: 1.272 samples/sec, CrossEntropy=2.054, SmoothL1=1.951\n",
      "[Epoch 23][Batch 160], Speed: 2.179 samples/sec, CrossEntropy=2.049, SmoothL1=1.922\n",
      "[Epoch 23][Batch 180], Speed: 1.416 samples/sec, CrossEntropy=2.052, SmoothL1=1.910\n",
      "[Epoch 23][Batch 200], Speed: 1.355 samples/sec, CrossEntropy=2.049, SmoothL1=1.899\n",
      "[Epoch 23][Batch 220], Speed: 1.011 samples/sec, CrossEntropy=2.050, SmoothL1=1.933\n",
      "[Epoch 23][Batch 240], Speed: 0.786 samples/sec, CrossEntropy=2.058, SmoothL1=1.972\n",
      "[Epoch 23][Batch 260], Speed: 1.335 samples/sec, CrossEntropy=2.058, SmoothL1=1.971\n",
      "[Epoch 23][Batch 280], Speed: 1.169 samples/sec, CrossEntropy=2.059, SmoothL1=1.970\n",
      "[Epoch 23][Batch 300], Speed: 1.464 samples/sec, CrossEntropy=2.056, SmoothL1=1.973\n",
      "[Epoch 23][Batch 320], Speed: 2.014 samples/sec, CrossEntropy=2.057, SmoothL1=1.976\n",
      "[Epoch 23][Batch 340], Speed: 0.649 samples/sec, CrossEntropy=2.055, SmoothL1=1.974\n",
      "[Epoch 23][Batch 360], Speed: 1.434 samples/sec, CrossEntropy=2.054, SmoothL1=1.979\n",
      "[Epoch 23][Batch 380], Speed: 1.501 samples/sec, CrossEntropy=2.051, SmoothL1=1.966\n",
      "[Epoch 24][Batch 0], Speed: 0.955 samples/sec, CrossEntropy=2.250, SmoothL1=4.871\n",
      "[Epoch 24][Batch 20], Speed: 0.631 samples/sec, CrossEntropy=2.088, SmoothL1=2.013\n",
      "[Epoch 24][Batch 40], Speed: 1.440 samples/sec, CrossEntropy=2.035, SmoothL1=1.902\n",
      "[Epoch 24][Batch 60], Speed: 0.873 samples/sec, CrossEntropy=2.045, SmoothL1=1.870\n",
      "[Epoch 24][Batch 80], Speed: 1.116 samples/sec, CrossEntropy=2.038, SmoothL1=1.954\n",
      "[Epoch 24][Batch 100], Speed: 0.930 samples/sec, CrossEntropy=2.044, SmoothL1=1.941\n",
      "[Epoch 24][Batch 120], Speed: 0.954 samples/sec, CrossEntropy=2.048, SmoothL1=1.961\n",
      "[Epoch 24][Batch 140], Speed: 1.003 samples/sec, CrossEntropy=2.044, SmoothL1=1.992\n",
      "[Epoch 24][Batch 160], Speed: 0.744 samples/sec, CrossEntropy=2.048, SmoothL1=2.015\n",
      "[Epoch 24][Batch 180], Speed: 1.144 samples/sec, CrossEntropy=2.050, SmoothL1=1.991\n",
      "[Epoch 24][Batch 200], Speed: 0.915 samples/sec, CrossEntropy=2.052, SmoothL1=1.974\n",
      "[Epoch 24][Batch 220], Speed: 0.974 samples/sec, CrossEntropy=2.052, SmoothL1=1.953\n",
      "[Epoch 24][Batch 240], Speed: 0.911 samples/sec, CrossEntropy=2.055, SmoothL1=1.946\n",
      "[Epoch 24][Batch 260], Speed: 1.133 samples/sec, CrossEntropy=2.048, SmoothL1=1.928\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "[Epoch 24][Batch 280], Speed: 0.618 samples/sec, CrossEntropy=2.058, SmoothL1=1.957\n",
      "[Epoch 24][Batch 300], Speed: 2.330 samples/sec, CrossEntropy=2.059, SmoothL1=1.962\n",
      "[Epoch 24][Batch 320], Speed: 1.069 samples/sec, CrossEntropy=2.058, SmoothL1=1.962\n",
      "[Epoch 24][Batch 340], Speed: 0.966 samples/sec, CrossEntropy=2.057, SmoothL1=1.958\n",
      "[Epoch 24][Batch 360], Speed: 0.930 samples/sec, CrossEntropy=2.053, SmoothL1=1.951\n",
      "[Epoch 24][Batch 380], Speed: 1.012 samples/sec, CrossEntropy=2.050, SmoothL1=1.959\n",
      "[Epoch 25][Batch 0], Speed: 0.871 samples/sec, CrossEntropy=2.141, SmoothL1=1.410\n",
      "[Epoch 25][Batch 20], Speed: 0.884 samples/sec, CrossEntropy=2.031, SmoothL1=2.035\n",
      "[Epoch 25][Batch 40], Speed: 0.566 samples/sec, CrossEntropy=2.049, SmoothL1=2.037\n",
      "[Epoch 25][Batch 60], Speed: 1.477 samples/sec, CrossEntropy=2.049, SmoothL1=2.028\n",
      "[Epoch 25][Batch 80], Speed: 1.322 samples/sec, CrossEntropy=2.057, SmoothL1=1.999\n",
      "[Epoch 25][Batch 100], Speed: 1.056 samples/sec, CrossEntropy=2.063, SmoothL1=1.943\n",
      "[Epoch 25][Batch 120], Speed: 1.155 samples/sec, CrossEntropy=2.069, SmoothL1=1.948\n",
      "[Epoch 25][Batch 140], Speed: 1.503 samples/sec, CrossEntropy=2.051, SmoothL1=1.936\n",
      "[Epoch 25][Batch 160], Speed: 0.843 samples/sec, CrossEntropy=2.055, SmoothL1=1.951\n",
      "[Epoch 25][Batch 180], Speed: 0.773 samples/sec, CrossEntropy=2.052, SmoothL1=1.942\n",
      "[Epoch 25][Batch 200], Speed: 1.001 samples/sec, CrossEntropy=2.050, SmoothL1=1.986\n",
      "[Epoch 25][Batch 220], Speed: 1.348 samples/sec, CrossEntropy=2.056, SmoothL1=1.962\n",
      "[Epoch 25][Batch 240], Speed: 1.375 samples/sec, CrossEntropy=2.056, SmoothL1=1.976\n",
      "[Epoch 25][Batch 260], Speed: 0.728 samples/sec, CrossEntropy=2.052, SmoothL1=1.964\n",
      "[Epoch 25][Batch 280], Speed: 1.348 samples/sec, CrossEntropy=2.057, SmoothL1=1.970\n",
      "[Epoch 25][Batch 300], Speed: 1.049 samples/sec, CrossEntropy=2.054, SmoothL1=1.968\n",
      "[Epoch 25][Batch 320], Speed: 1.151 samples/sec, CrossEntropy=2.057, SmoothL1=1.961\n",
      "[Epoch 25][Batch 340], Speed: 1.322 samples/sec, CrossEntropy=2.051, SmoothL1=1.951\n",
      "[Epoch 25][Batch 360], Speed: 0.775 samples/sec, CrossEntropy=2.045, SmoothL1=1.929\n",
      "[Epoch 25][Batch 380], Speed: 1.190 samples/sec, CrossEntropy=2.042, SmoothL1=1.930\n",
      "[Epoch 26][Batch 0], Speed: 1.055 samples/sec, CrossEntropy=2.066, SmoothL1=1.690\n",
      "[Epoch 26][Batch 20], Speed: 0.893 samples/sec, CrossEntropy=1.951, SmoothL1=1.767\n",
      "[Epoch 26][Batch 40], Speed: 0.910 samples/sec, CrossEntropy=1.939, SmoothL1=1.883\n",
      "[Epoch 26][Batch 60], Speed: 1.196 samples/sec, CrossEntropy=1.926, SmoothL1=1.894\n",
      "[Epoch 26][Batch 80], Speed: 1.106 samples/sec, CrossEntropy=1.949, SmoothL1=1.899\n",
      "[Epoch 26][Batch 100], Speed: 1.032 samples/sec, CrossEntropy=1.965, SmoothL1=1.873\n",
      "[Epoch 26][Batch 120], Speed: 1.996 samples/sec, CrossEntropy=1.955, SmoothL1=1.894\n",
      "[Epoch 26][Batch 140], Speed: 1.074 samples/sec, CrossEntropy=1.964, SmoothL1=1.873\n",
      "[Epoch 26][Batch 160], Speed: 1.026 samples/sec, CrossEntropy=1.966, SmoothL1=1.853\n",
      "[Epoch 26][Batch 180], Speed: 0.781 samples/sec, CrossEntropy=1.972, SmoothL1=1.843\n",
      "[Epoch 26][Batch 200], Speed: 1.445 samples/sec, CrossEntropy=1.973, SmoothL1=1.829\n",
      "[Epoch 26][Batch 220], Speed: 1.400 samples/sec, CrossEntropy=1.978, SmoothL1=1.841\n",
      "[Epoch 26][Batch 240], Speed: 1.387 samples/sec, CrossEntropy=1.978, SmoothL1=1.842\n",
      "[Epoch 26][Batch 260], Speed: 1.495 samples/sec, CrossEntropy=1.975, SmoothL1=1.843\n",
      "[Epoch 26][Batch 280], Speed: 0.742 samples/sec, CrossEntropy=1.983, SmoothL1=1.855\n",
      "[Epoch 26][Batch 300], Speed: 1.244 samples/sec, CrossEntropy=1.983, SmoothL1=1.879\n",
      "[Epoch 26][Batch 320], Speed: 1.103 samples/sec, CrossEntropy=1.988, SmoothL1=1.883\n",
      "[Epoch 26][Batch 340], Speed: 0.760 samples/sec, CrossEntropy=1.996, SmoothL1=1.894\n",
      "[Epoch 26][Batch 360], Speed: 0.836 samples/sec, CrossEntropy=2.001, SmoothL1=1.904\n",
      "[Epoch 26][Batch 380], Speed: 0.740 samples/sec, CrossEntropy=1.999, SmoothL1=1.915\n",
      "[Epoch 27][Batch 0], Speed: 0.866 samples/sec, CrossEntropy=1.937, SmoothL1=2.179\n",
      "[Epoch 27][Batch 20], Speed: 2.221 samples/sec, CrossEntropy=2.148, SmoothL1=2.010\n",
      "[Epoch 27][Batch 40], Speed: 0.625 samples/sec, CrossEntropy=2.123, SmoothL1=1.902\n",
      "[Epoch 27][Batch 60], Speed: 1.114 samples/sec, CrossEntropy=2.084, SmoothL1=1.973\n",
      "[Epoch 27][Batch 80], Speed: 0.959 samples/sec, CrossEntropy=2.036, SmoothL1=1.908\n",
      "[Epoch 27][Batch 100], Speed: 1.578 samples/sec, CrossEntropy=2.038, SmoothL1=1.887\n",
      "[Epoch 27][Batch 120], Speed: 1.224 samples/sec, CrossEntropy=2.046, SmoothL1=1.946\n",
      "[Epoch 27][Batch 140], Speed: 0.962 samples/sec, CrossEntropy=2.045, SmoothL1=1.967\n",
      "[Epoch 27][Batch 160], Speed: 0.754 samples/sec, CrossEntropy=2.039, SmoothL1=1.949\n",
      "[Epoch 27][Batch 180], Speed: 1.042 samples/sec, CrossEntropy=2.038, SmoothL1=1.931\n",
      "[Epoch 27][Batch 200], Speed: 1.041 samples/sec, CrossEntropy=2.037, SmoothL1=1.927\n",
      "[Epoch 27][Batch 220], Speed: 0.695 samples/sec, CrossEntropy=2.033, SmoothL1=1.929\n",
      "[Epoch 27][Batch 240], Speed: 0.852 samples/sec, CrossEntropy=2.023, SmoothL1=1.917\n",
      "[Epoch 27][Batch 260], Speed: 0.687 samples/sec, CrossEntropy=2.023, SmoothL1=1.924\n",
      "[Epoch 27][Batch 280], Speed: 1.142 samples/sec, CrossEntropy=2.024, SmoothL1=1.938\n",
      "[Epoch 27][Batch 300], Speed: 0.902 samples/sec, CrossEntropy=2.019, SmoothL1=1.943\n",
      "[Epoch 27][Batch 320], Speed: 0.894 samples/sec, CrossEntropy=2.019, SmoothL1=1.930\n",
      "[Epoch 27][Batch 340], Speed: 0.756 samples/sec, CrossEntropy=2.014, SmoothL1=1.933\n",
      "[Epoch 27][Batch 360], Speed: 0.705 samples/sec, CrossEntropy=2.019, SmoothL1=1.951\n",
      "[Epoch 27][Batch 380], Speed: 1.188 samples/sec, CrossEntropy=2.022, SmoothL1=1.941\n",
      "[Epoch 28][Batch 0], Speed: 1.251 samples/sec, CrossEntropy=1.503, SmoothL1=1.700\n",
      "[Epoch 28][Batch 20], Speed: 1.495 samples/sec, CrossEntropy=1.976, SmoothL1=2.038\n",
      "[Epoch 28][Batch 40], Speed: 0.683 samples/sec, CrossEntropy=1.986, SmoothL1=1.992\n",
      "[Epoch 28][Batch 60], Speed: 1.061 samples/sec, CrossEntropy=2.012, SmoothL1=1.995\n",
      "[Epoch 28][Batch 80], Speed: 1.808 samples/sec, CrossEntropy=2.005, SmoothL1=1.980\n",
      "[Epoch 28][Batch 100], Speed: 0.867 samples/sec, CrossEntropy=2.017, SmoothL1=2.030\n",
      "[Epoch 28][Batch 120], Speed: 1.036 samples/sec, CrossEntropy=2.029, SmoothL1=2.079\n",
      "[Epoch 28][Batch 140], Speed: 1.803 samples/sec, CrossEntropy=2.013, SmoothL1=2.036\n",
      "[Epoch 28][Batch 160], Speed: 1.003 samples/sec, CrossEntropy=1.994, SmoothL1=2.023\n",
      "[Epoch 28][Batch 180], Speed: 0.972 samples/sec, CrossEntropy=1.988, SmoothL1=2.005\n",
      "[Epoch 28][Batch 200], Speed: 1.110 samples/sec, CrossEntropy=1.986, SmoothL1=2.013\n",
      "[Epoch 28][Batch 220], Speed: 1.234 samples/sec, CrossEntropy=1.986, SmoothL1=1.998\n",
      "[Epoch 28][Batch 240], Speed: 0.710 samples/sec, CrossEntropy=1.990, SmoothL1=1.986\n",
      "[Epoch 28][Batch 260], Speed: 0.727 samples/sec, CrossEntropy=1.990, SmoothL1=1.968\n",
      "[Epoch 28][Batch 280], Speed: 1.189 samples/sec, CrossEntropy=2.003, SmoothL1=1.962\n",
      "[Epoch 28][Batch 300], Speed: 1.007 samples/sec, CrossEntropy=1.999, SmoothL1=1.947\n",
      "[Epoch 28][Batch 320], Speed: 0.711 samples/sec, CrossEntropy=1.994, SmoothL1=1.949\n",
      "[Epoch 28][Batch 340], Speed: 0.845 samples/sec, CrossEntropy=1.992, SmoothL1=1.945\n",
      "[Epoch 28][Batch 360], Speed: 1.455 samples/sec, CrossEntropy=1.987, SmoothL1=1.927\n",
      "[Epoch 28][Batch 380], Speed: 1.059 samples/sec, CrossEntropy=1.987, SmoothL1=1.932\n",
      "[Epoch 29][Batch 0], Speed: 1.006 samples/sec, CrossEntropy=1.929, SmoothL1=1.899\n",
      "[Epoch 29][Batch 20], Speed: 0.886 samples/sec, CrossEntropy=1.992, SmoothL1=1.931\n",
      "[Epoch 29][Batch 40], Speed: 1.153 samples/sec, CrossEntropy=2.022, SmoothL1=1.919\n",
      "[Epoch 29][Batch 60], Speed: 1.328 samples/sec, CrossEntropy=1.962, SmoothL1=1.930\n",
      "[Epoch 29][Batch 80], Speed: 0.987 samples/sec, CrossEntropy=1.968, SmoothL1=1.850\n",
      "[Epoch 29][Batch 100], Speed: 0.779 samples/sec, CrossEntropy=1.967, SmoothL1=1.892\n",
      "[Epoch 29][Batch 120], Speed: 1.027 samples/sec, CrossEntropy=1.964, SmoothL1=1.869\n",
      "[Epoch 29][Batch 140], Speed: 1.266 samples/sec, CrossEntropy=1.966, SmoothL1=1.845\n",
      "[Epoch 29][Batch 160], Speed: 0.694 samples/sec, CrossEntropy=1.964, SmoothL1=1.826\n",
      "[Epoch 29][Batch 180], Speed: 0.909 samples/sec, CrossEntropy=1.970, SmoothL1=1.842\n",
      "[Epoch 29][Batch 200], Speed: 1.072 samples/sec, CrossEntropy=1.975, SmoothL1=1.835\n",
      "[Epoch 29][Batch 220], Speed: 0.617 samples/sec, CrossEntropy=1.978, SmoothL1=1.855\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "[Epoch 29][Batch 240], Speed: 0.933 samples/sec, CrossEntropy=1.990, SmoothL1=1.857\n",
      "[Epoch 29][Batch 260], Speed: 0.931 samples/sec, CrossEntropy=1.985, SmoothL1=1.840\n",
      "[Epoch 29][Batch 280], Speed: 0.965 samples/sec, CrossEntropy=1.990, SmoothL1=1.843\n",
      "[Epoch 29][Batch 300], Speed: 1.518 samples/sec, CrossEntropy=1.989, SmoothL1=1.858\n",
      "[Epoch 29][Batch 320], Speed: 1.252 samples/sec, CrossEntropy=1.991, SmoothL1=1.893\n",
      "[Epoch 29][Batch 340], Speed: 0.961 samples/sec, CrossEntropy=1.996, SmoothL1=1.916\n",
      "[Epoch 29][Batch 360], Speed: 3.016 samples/sec, CrossEntropy=1.997, SmoothL1=1.923\n",
      "[Epoch 29][Batch 380], Speed: 1.066 samples/sec, CrossEntropy=1.996, SmoothL1=1.914\n"
     ]
    }
   ],
   "source": [
    "gtf.Train(epochs, params_file);"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Inference"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {},
   "outputs": [],
   "source": [
    "import os\n",
    "import sys\n",
    "sys.path.append(\"Monk_Object_Detection/1_gluoncv_finetune/lib/\");"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [],
   "source": [
    "from inference_prototype import Infer"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "metadata": {},
   "outputs": [],
   "source": [
    "model_name = \"ssd_512_vgg16_atrous_coco\";\n",
    "params_file = \"saved_model.params\";\n",
    "class_list = [\"paragraph\", \"heading\", \"credit\", \"footer\", \"drop-capital\", \"floating\", \"noise\", \"maths\", \"header\", \"caption\", \"image\", \"linedrawing\", \"graphics\", \"fname\", \"page-number\", \"chart\", \"separator\", \"table\"];"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 9,
   "metadata": {},
   "outputs": [],
   "source": [
    "gtf = Infer(model_name, params_file, class_list, use_gpu=True);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 11,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    },
    {
     "data": {
      "text/plain": [
       "<Figure size 432x288 with 0 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "img_name = \"Test_Images/test1.jpg\"; \n",
    "visualize = True;\n",
    "thresh = 0.3;\n",
    "output = gtf.run(img_name, visualize=visualize, thresh=thresh);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 63,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    },
    {
     "data": {
      "text/plain": [
       "<Figure size 432x288 with 0 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "img_name = \"Test_Images/test2.jpg\"; \n",
    "visualize = True;\n",
    "thresh = 0.3;\n",
    "output = gtf.run(img_name, visualize=visualize, thresh=thresh);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 66,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    },
    {
     "data": {
      "text/plain": [
       "<Figure size 432x288 with 0 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "img_name = \"Test_Images/test3.jpg\"; \n",
    "visualize = True;\n",
    "thresh = 0.4;\n",
    "output = gtf.run(img_name, visualize=visualize, thresh=thresh);"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Inference\n",
    "SSD512 produces outputs with very high confidence, a lot of them being 0.9+. It was also the only model which was able to identify footer and noises like division lines in the document. But it was also producing repetitive or incorrect headings such as ‘floating’ in the 2nd example (extra box with incorrect label), and graphics and paragraph in the third (2 boxes with different labels for the same region).\n",
    "\n",
    "If these small details like footer, separator, etc. are crucial for your work and the focus is more on bounding box prediction than classification, go for SSD512. It should also be considered that gluoncv-finetune pipeline of Monk AI (which has been used for SSD512) also provides architectures which are pre-trained on various other datasets, such as COCO dataset."
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.6.9"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 4
}
